2 Crime Measurement and Statistics

Image showing graffiti along the walls lining a freeway that reads, “Greed is the knife & the scars run deep.”
Is there a definitive boundary between street art and graffiti that contributes to aesthetics or conveys positive messages? The selective criminalization of one over the other prompts reflections on the subjective nature of legality. It also highlights the importance of obtaining permission and understanding the context and intent behind urban expressions, which can shed light on crucial social issues such as inequality, discrimination, gender-based violence, anti-war sentiments, and calls for peace./ Photo credit: Eric Jones, CC BY SA 2.0

Overview

Crime is a multifaceted concept deeply entrenched in the fabric of human society, reflecting not only legal violations but also moral, ethical, and cultural standards. Essentially, crime can be understood as any behavior that violates the established norms, laws, or expectations within a society as agreed-upon standards by a prevailing authority, whether it be a government, religious institution, or community consensus. These norms and laws are the product of social agreements and structures that define acceptable conduct and regulate interactions among individuals. Crime, therefore, represents a deviation from these agreed-upon standards, whether it involves theft, assault, fraud, or other prohibited actions.

Philosophically, crime raises fundamental questions about the nature of law, morality, and human behavior. What drives individuals to transgress established boundaries? Are some actions inherently wrong, or are they defined as such by social constructs? These inquiries delve into the realms of ethics, psychology, and sociology, probing the complexities of human nature and social order.

The definition of crime is not static; it evolves alongside societal norms, legal frameworks, and shifting perspectives on justice. Social structures play a crucial role in shaping perceptions of what constitutes crime and in determining the consequences for those who engage in criminal behavior. These structures include legal systems, cultural norms, economic arrangements, and power dynamics within society. For example, a behavior considered criminal in one society may be accepted or even encouraged in another, depending on the prevailing social values, cultural systems of belief, and legal frameworks.

Crime manifests differently across communities and is influenced by a myriad of factors including sociocultural factors, economic disparities, and power dynamics. Moreover, social structures can influence the distribution of crime within a society. Factors such as socioeconomic status, access to resources, and community cohesion can impact both the likelihood of individuals engaging in criminal behavior and their chances of being caught and punished for it. In societies with high levels of inequality, for instance, individuals may resort to crime as a means of survival or protest against perceived injustices. Additionally, social structures shape responses to crime, including the enforcement of laws, the administration of justice, and the rehabilitation of offenders. The effectiveness and fairness of these responses often depend on the extent to which formal social structures promote equality, access to resources, and accountability. In societies where social structures are characterized by systemic discrimination or corruption, for example, marginalized groups may face disproportionate policing, harsher punishments, and limited opportunities for rehabilitation. Understanding crime as a product of societal norms and structures is paramount as a foundational framework for examining the methodologies and implications of measuring crime and compiling statistics.

In the modern context, the practical task of measuring crime and compiling statistics takes on heightened significance imperative for maintaining public safety, administering justice, and shaping policies. Crime statistics serve as vital tools for policymakers, law enforcement agencies, and researchers, providing insights into patterns of criminal behavior, societal vulnerabilities, and the efficacy of interventions.

Measuring crime and compiling statistics is not merely an empirical endeavor; it is deeply intertwined with broader societal issues such as inequality, access to justice, and the effectiveness of law enforcement. The methods used to collect crime data, the definitions employed, and the interpretation of statistical trends are all crucial elements that are highly influenced by the social contexts in which they operate. Moreover, the reliability and accuracy of crime statistics can vary widely depending on the transparency of data collection processes, the biases of reporting mechanisms, and the inclusivity of marginalized voices.

In this chapter, we will investigate the methodologies, complexities, and challenges involved in measuring crime and compiling accurate statistics, as well as implications of quantifying crime within societies. From the intricacies of data collection to the interpretation of statistical trends, we will navigate the landscape of crime analysis, the tools and techniques used by researchers, policymakers, and law enforcement agencies to assess the prevalence and patterns of crime within American society. By critically engaging with these issues, we endeavor to deepen our understanding of crime as a social phenomenon and to contribute to more informed discussions and interventions aimed at addressing its root causes and consequences. Through this exploration, we aim to not only understand the empirical realities of crime but also to delve deeper into its philosophical underpinnings, enriching our comprehension of this complex and enduring facet of human existence.

Objectives

  1. Examine the concept of crime within the American criminal justice framework.
  2. Differentiate between various types of crime, including violent, public order, and economic, analyzing their distinct characteristics.
  3. Summarize the diverse methodologies utilized in the collection of criminal justice data, encompassing cohort research data, experimental data, observational and interview research, meta-analysis and systematic review, data mining, and crime mapping.
  4. Explain the array of approaches employed to measure crime, including traditional Uniform Crime Reports (UCR), National Crime Victimization Surveys (NCVS), National Incident-Based Reporting System (NIBRS), self-report surveys, and scholarly research,
  5. Develop a general understanding of the complexities inherent in crime measurement, including issues of underreporting, dark figure of crime, and the influence of social, economic, and cultural factors on data interpretation.

 

Key Terms

  • Assault
  • Bureau of Justice Statistics
  • Child abuse
  • Emotional abuse
  • Expressive violence
  • Harassment
  • Hate crimes
  • Hierarchy Rule
  • Homicide
  • Instrumental violence
  • Loitering
  • National Crime Victimization Survey (NCVS)
  • National Incident-Based Reporting System (NIBRS)
  • Physical abuse
  • Public decency crimes
  • Public order crimes
  • Qualitative research
  • Quantitative research
  • Rape
  • Serial murder
  • Sexual abuse
  • Uniform Crime Report (UCR)
  • Vagrancy
  • Vandalism
  • Violent crimes

 

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Close-up image of yellow crime scene tape, unceremoniously unfurled/ Photo credit: Yumi Kimura [puamelia], CC BY SA 2.0

2.1 Introduction to Crime

Crime encompasses a wide array of behaviors that deviate from established norms and laws within a society. Understanding crime involves delving into the philosophical and sociological dimensions that shape its definition, prevalence, and legal consequences. It’s not just about examining its manifestations but also exploring the underlying motivations and repercussions on communities and society as a whole, which is crucial for understanding its multifaceted nature.

In the subsequent section, we will delve into various categories of crime that serve as a framework that allows us to organize and analyze the diverse range of offenses observed in society. By evaluating these categories, we aim to unravel the complexities of criminal behavior, shedding light on the underlying factors driving different types of offenses and their impact on individuals, communities, and the broader social fabric. Through this exploration, we strive to deepen our understanding of crime and its multifaceted nature, laying the groundwork for informed discussions and interventions aimed at addressing its root causes and consequences.

2.1.1 Crime Categories

Every year, millions of crimes occur across the U.S., spanning a wide spectrum from the gravest offenses such as murder, rape, or assault, to relatively minor transgressions like shoplifting, littering, or video piracy (Federal Bureau of Investigation [FBI], 2020b). Statistics and crime research play pivotal roles in elucidating crime patterns, addressing crime-related issues, and even unraveling the underlying dynamics of criminal behavior and social dynamics. However, before delving into crime measurements and statistics, it is imperative to establish a clear understanding of precisely what we are measuring and the parameters guiding our analyses.

Categorizing crime types into distinct classifications serves as a foundational tool for understanding the multifaceted nature of criminal behavior and its implications for society. Through this structured framework, stakeholders can develop more informed strategies to prevent crime, promote public safety, and foster social justice. Due to the broad range of crime types, each reflecting unique aspects of human behavior and societal dynamics, categorization becomes essential for effective analysis and understanding. From crimes of violence that threaten physical safety and wellbeing to offenses against public order that disrupt social harmony, and white-collar crimes that often involve sophisticated schemes targeting financial systems, the spectrum of criminal behavior is vast and multifaceted.

Categorization allows researchers, policymakers, and law enforcement agencies to organize this complexity into manageable frameworks, facilitating deeper insights into the underlying motivations, patterns, and consequences of criminal activity. By delineating distinct categories, we can identify common trends, disparities, and emerging threats within the realm of crime, enabling more targeted interventions and resource allocation.

In the subsequent section, we will explore how these categories—violent crimes, public order crimes, and white-collar crimes—serve as lenses through which to examine the diverse manifestations of criminal behavior, each offering unique insights into the complexities of crime in contemporary society. Through this exploration, we aim to deepen our understanding of the multifaceted nature of crime and lay the groundwork for informed discussions and interventions aimed at promoting safety, justice, and social well-being.

Figure 2.2

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Close-up photo of cash, drugs, bullets, and a handgun on a wooden table./ Photo Credit: Pat WilsonCZ75, CC BY 2.0

2.1.1.1 Violent Crimes

Violent crimes represent some of the most serious and devastatingly impactful offenses within the realm of criminal behavior. This category encompasses a range of actions that involve the use or threat of force against individuals or groups, often resulting in physical harm, injury, or death. Due to the severity of these types of offenses, violent offenders are often punished more harshly compared to non-violent criminal offenders.

Within the realm of violent crimes, we can delineate between two primary types: expressive and instrumental violence. Expressive violence is characterized by acts propelled by intense emotions like rage, anger, or frustration, resulting in impulsive and uncontrolled behavior. On the other hand, instrumental violence involves actions strategically aimed at achieving certain goals or objectives, such as bolstering the perpetrator’s financial or social standing. Consider, for instance, a scenario where an employee is assaulted and tied up during a bank robbery—an exemplification of instrumental violence. In this context, violence transcends being a mere outburst of emotion; instead, it becomes a calculated tool strategically employed to achieve a specific objective, namely, financial gain.

Violent crimes encompass a broad array of acts, each with distinct features and societal ramifications. To enhance research and analysis, violent crimes are often segmented into multiple categories based on similar characteristics, facilitating a more nuanced understanding of each type. For this section, we will use the following categories: gang-related crimes, intimate crimes, hate crimes, and homicide. Examining these groupings offers valuable insights into the intricate dynamics shaping such behavior, pinpointing common patterns, underlying motivations, and risk factors. Understanding these components is vital for developing effective strategies that prevent and address such offenses, while also promoting safety, justice, and resilience within communities affected by violent crime.

In the upcoming discussion, we will delve deeper into the subcategories of violent crime, examining their defining characteristics and societal impacts in greater depth. Through this exploration, we aim to foster a comprehensive understanding of the complexities of violent crime and inform evidence-based interventions that reduce its occurrence and mitigate its harm.

2.1.1.1.2 Gang-Related Violent Crimes

Among violent crimes, gang-related violence stands out as a distinctive subcategory that profoundly impacts communities worldwide. Gang-related violence encompasses a wide array of criminal activities perpetrated by organized groups, driven by a complexity of motivations such as territorial disputes, interpersonal conflicts among gang networks, drug trafficking, and other illicit enterprises.

Gang-related violence extends beyond mere criminal activities; it represents a subculture characterized by its own social norms, hierarchies, and codes of conduct (Anderson, 2000). Although gangs may form as a means of protection or survival within disadvantaged communities, their activities frequently extend beyond mere self-preservation, leading to significant social disruption and harm. These gangs often provide a sense of belonging and identity for marginalized individuals, drawing them into a cycle of violence and criminality. From street gangs in urban neighborhoods to organized crime syndicates operating across international borders, the extent and influence of gang-related violence are broad-spanning and multifaceted.

Territorial disputes lie at the heart of many gang-related conflicts, as rival groups vie for control over lucrative drug markets or other illicit activities. These disputes can escalate into acts of violence, including shootings, stabbings, or other forms of physical aggression, as gangs seek to assert dominance and protect their interests.

Interpersonal conflicts among gang members also contribute to the prevalence of gang-related violence. Disputes over perceived slights, betrayals, or challenges to authority within gang hierarchies can quickly escalate into violent confrontations. Another form of interpersonal conflict arises between rival gangs as they seek retribution for past offenses, often perpetuating cycles of retaliation and escalation, thus leading to a continuous cycle of violence.

In addition to the immediate physical threats posed by gang violence, such as shootings, stabbings, or assaults, gang activity also inflicts extensive consequences for the surrounding communities. Residents of these affected neighborhoods often experience heightened fear and insecurity, compounded by negative economic repercussions resulting from reduced property values and limited business opportunities in gang-controlled areas (Agnew & White, 1992; Ratcliffe & Taniguchi, 2008). Moreover, innocent bystanders, including children, may become unintended victims of gang-related shootings or other violent acts, further exacerbating the impact on community safety and cohesion. Additionally, the involvement of gangs in drug trafficking and other criminal enterprises adds another layer of complexity to gang-related violence. The pursuit of profit and power compels gangs to engage in illegal activities, fueling violence and perpetuating social instability within communities.

2.1.1.1.2.1 The National Youth Gang Survey

Understanding the dynamics of gang-related violence is crucial for devising effective strategies to combat this pervasive societal issue. The National Youth Gang Survey (NYGS) serves as a pivotal resource for policymakers, law enforcement agencies, researchers, and community organizations dedicated to addressing gang-related challenges. Its comprehensive data and analysis greatly contribute to informing evidence-based strategies aimed at reducing gang violence and improving community safety.

The NYGS collects information on the number of gangs, gang members, and gang-related crimes reported in different regions. By tracking these statistics over time, it assists law enforcement agencies, policymakers, and researchers in identifying areas with high gang activity and allocating resources accordingly (National Gang Center, n.d.). Moreover, the NYGS examines various aspects of gang involvement, including demographics of gang members, gang structure, recruitment methods, and the types of criminal activities associated with gangs. This detailed analysis provides valuable insights into the underlying factors contributing to gang formation and violence.

Additionally, the NYGS plays a crucial role in evaluating the effectiveness of gang prevention and intervention programs. By assessing changes in gang-related metrics before and after the implementation of such initiatives, researchers can determine which strategies are most successful in reducing gang activity and violence. Overall, the National Youth Gang Survey is an indispensable tool in the ongoing efforts to address and mitigate the impact of gang-related violence in communities across the U.S.

2.1.1.1.2 Intimate Crimes

Intimate partner violence encompasses a range of abusive behaviors that can occur within romantic or familial relationships, as well as interactions with acquaintances or relative strangers. This form of violence extends beyond physical harm to include emotional and psychological abuse, often leaving lasting scars on victims and survivors.

Within intimate relationships, abuse can take various forms, including physical violence such as hitting, kicking, or choking, as well as emotional manipulation, coercion, and control. Both physical abuse [GL/] and emotional abuse are often characterized by patterns of power and control, where perpetrators seek to dominate and intimidate their partners through threats, isolation, and manipulation.

Sexual abuse represents one form of intimate violent crime that occurs within both intimate and non-intimate relationships. These acts of violence violate the bodily autonomy and consent of the victim, causing profound physical and psychological harm. Rape, in particular, is a deeply traumatic experience that involves non-consensual sexual intercourse or penetration, perpetrated by a partner, acquaintance, or relative stranger. Victims of sexual violence often face significant physical, emotional, and social consequences, including post-traumatic stress disorder, depression, and social stigmatization.

In addition to violence perpetrated by romantic partners, intimate violence can also occur within familial relationships, such as parent-child or sibling relationships. In these instances, child abuse may manifest as neglect, emotional manipulation, or physical violence, further complicating the dynamics of power and control within the family unit.

Measuring intimate violent crimes poses unique challenges due to underreporting, victim reluctance to disclose abuse, and certain cultural beliefs that normalize or condone abusive behavior within intimate relationships (Hien & Ruglass, 2009). However, efforts such as victimization surveys, forensic examinations, and specialized law enforcement units dedicated to domestic violence and sexual assault play crucial roles in gathering data and providing support to victims. For additional data on intimate partner violence, see the Office for Victims of Crime fact sheet.

2.1.1.1.3 Hate Crimes

Hate crimes represent a particularly insidious form of violence motivated by prejudice or bias against specific groups based on immutable characteristics such as race , religion, ethnicity , sexual orientation, or gender identity. These crimes are not only attacks on individual victims but also deliberate assaults on the very fabric of diversity and inclusion within society.

Crimes motivated by hate can take various forms, ranging from verbal harassment and physical assault to vandalism and even homicide . Minority group members are often targeted simply because of who they are, leading to a profound sense of fear, vulnerability, and alienation within affected communities.

The impact of hate crimes extends far beyond the immediate victims, reverberating throughout entire communities and exacerbating preexisting social divisions. By instilling fear and intimidation, perpetrators aim to erode the sense of safety and belonging that is fundamental to the well-being of all individuals within their communities.

Addressing hate crimes requires a multifaceted approach that includes robust legal protections, proactive law enforcement efforts, and community-based initiatives aimed at promoting tolerance and understanding. Legislation that enhances penalties for hate-motivated offenses sends a clear message that such behavior will not be tolerated in a civilized society.

Figure 2.3

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Photo illustration of a photographer documenting a homicide scene with crime scene tape surrounding a body outline marked in white tape on the ground next to a pool of blood staining the road./ Photo Credit: CC0 Public Domain 1.0
2.1.1.1.4 Homicide

At the most extreme end of the spectrum, murder represents the ultimate act of violence, resulting in the intentional killing of another person. Whether motivated by personal vendettas, ideological beliefs, financial gain, or other factors, murder carries profound societal implications not only on the victim, their family, and friends, but often elicits strong emotional responses from communities and law enforcement authorities alike.

While many violent crimes can escalate to murder, the underlying motivation behind the crime often dictates the number of victims involved. In cases such as gang-related or intimate partner murders, the violence tends to be more targeted and localized, typically occurring within known or isolated areas. However, in instances of random acts of murder, such as mass shootings or serial killings, the violence is more indiscriminate and unpredictable, instilling widespread fear and anxiety within communities, despite the rarity of such occurrences.

There are three primary categories of multiple murders : serial murders, murder sprees, and mass murders. Serial murder , commonly known as the action of a serial killer , is often defined as the killing of three or more people by an individual over a period of time. Alternatively, other definitions may be utilized, such as “a single offender who killed at least two victims in separate events at different times” (Morton et al., 2014, p. 10). A murder spree , on the other hand, entails a series of killings committed within a relatively short time frame (e.g., days or weeks), often without a clear interval between each event and in different locations. Meanwhile, mass murder involves the deliberate killing of multiple victims in a single location and time frame, typically involving four or more individuals.

Interpreting murder rates accurately is a complex task that extends beyond merely counting the total number of murders in a specific area. The motivations and circumstances surrounding different types of multiple murder crimes vary significantly, profoundly affecting data interpretation. Therefore, examining the underlying causes of murders is equally essential for a comprehensive understanding of murder rates. For example, a region with high murder rates may not necessarily imply a high risk of being murdered. The interpretation and implications of the data vary substantially depending on whether the murders were the result of multiple random incidents at different times or the outcome of a family murder suicide. Moreover, the motives and behaviors of a serial murderer with four victims differ significantly from those of a father who tragically takes the lives of four of his own family members. Despite the same number of victims in both scenarios, the differences in motive, behavior, and timing greatly alter the interpretation of the data and impact on policy.

To gain an accurate understanding of murder rates and devise effective strategies and policies, it’s essential to thoroughly examine a variety of critical variables. By grasping these nuances, policymakers and stakeholders can craft tailored policies and strategies aimed at tackling the underlying causes of homicide-related violent crimes. Furthermore, they can implement interventions and preventive measures to effectively counter the various factors contributing to different types of multiple murders.

2.1.1.2 Public Order and Public Decency Crimes

Throughout history, societies have often prohibited or regulated behaviors perceived as conflicting with cultural traditions, customs, and values, as well as social norms . These behaviors are typically known as public order and public decency crimes. These types of crimes encompass a diverse array of offenses that threaten the social fabric and communal well-being of a society. These offenses often involve behaviors that disrupt public peace, infringe upon societal norms, or compromise public safety and security. Ranging from disorderly conduct and public intoxication to vandalism and indecent exposure, these crimes pose challenges to maintaining a harmonious and orderly environment for all members of the community.

Public order crimes encompass behaviors perceived to disrupt or threaten public order, peace, and safety in society. These offenses typically violate social norms, codes of conduct, or community standards, rather than directly harming individuals or their property. They were essentially criminalized due to the perception that they unreasonably encroach upon and pose risk to public spaces. Examples of public order crimes include disorderly conduct, public intoxication, loitering, vandalism, graffiti, prostitution, and public urination. The enforcement of public order laws aims to maintain social order, preserve community well-being, and promote public safety.

Public decency crimes are offenses that involve behaviors or actions considered indecent, offensive, or inappropriate in public settings. These crimes typically revolve around violations of societal norms, moral standards, or community values regarding public behavior and conduct. Examples of public decency crimes include acts viewed as being harmful to our moral values and the cohesion of society, including indecent exposure, public nudity, lewd behavior, offensive language or gestures, public urination or defecation, and engaging in sexual activities in public places. The enforcement of public decency laws aims to uphold community standards of decency, protect public morality, and maintain the comfort and dignity of individuals in public spaces.

While these two categories of crimes differ, they share numerous similar characteristics, notably their capacity to ignite contentious debates over whether they merit criminal sanctions. Understanding the nature, prevalence, and implications of such offenses is crucial for law enforcement agencies, policymakers, and community leaders in devising effective strategies for prevention, enforcement, and intervention. The following sections explore specific categories of public order and public decency crimes, examining their distinct components and societal impact.

2.1.1.2.1 Prostitution

Prostitution is a complex issue often classified as both a public order crime and a public decency crime due to its perceived disruption of societal norms and public morality. It involves individuals, typically referred to as sex workers or prostitutes, providing sexual acts to clients in exchange for money or goods, occurring in public spaces like street corners or private establishments such as brothels. In many societies, engaging in or soliciting sexual services for compensation is illegal and considered disruptive to public order and decency.

The impact of prostitution on society is multifaceted. Characterized by its clandestine nature and often occurring in secluded or urban areas, prostitution has significant social implications. From a public order perspective, solicitation of sexual services in public spaces may disrupt the peace and tranquility of neighborhoods, leading to concerns about safety and community well-being. Additionally, it can contribute to public safety concerns such as increased crime rates, including drug trafficking, violence, and property crimes in areas where it is prevalent, as well as raises the potential for violence against both sex workers and clients (Kelling & Wilson, 1982).

From a public decency standpoint, prostitution is often seen as immoral or indecent behavior that undermines societal values and norms regarding sexuality and relationships. It raises questions about the objectification of individuals, exploitation, and human dignity. The visibility of prostitution in public spaces can also evoke discomfort or offense among community members, particularly in areas frequented by families or children.

Furthermore, prostitution intersects with various social issues, amplifying its impact on society. It intertwines with poverty, substance abuse, human trafficking, and health matters, deepening its societal repercussions. Many individuals involved in prostitution belong to vulnerable populations, including marginalized women, LGBTQ+ individuals, and those facing economic disadvantages, who may turn to sex work as a means of survival (Dank et al., 2015). Sex workers, particularly those operating in clandestine or illegal settings, often encounter significant risks to their health, safety, and overall well-being. In addition, prostitution relates to broader public health concerns as it can facilitate the transmission of sexually transmitted infections (STIs) and other health risks, presenting challenges for community health (World Health Organization, n.d.).

The impact of prostitution extends beyond immediate participants to affect broader societal attitudes and values. It can perpetuate harmful stereotypes and stigmas surrounding sexuality and gender roles. Furthermore, the normalization of prostitution in certain contexts may undermine efforts to promote gender equality and combat exploitation.

Efforts to address prostitution as a public order or public decency crime often entail a multifaceted approach involving law enforcement, social services, and community outreach. While implementing laws and regulations to deter and penalize the solicitation and purchase of sex is a common strategy, providing support services and exit strategies for individuals involved in prostitution is equally crucial.

Figure 2.4

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Photograph depicting powdered drugs and drug paraphernalia, with a pile of money blurred in the background./ Photo Credit: Marco Verch, CC BY 2.0
2.1.1.2.2 Illegal Drug Use

The impact of illegal drug use extends far beyond its immediate participants, influencing broader societal attitudes and values, undermining societal norms, compromises public safety, and diminishes community well-being. Its detrimental effects reverberate throughout affected neighborhoods, challenging community safety, eroding social cohesion, and diminishing overall quality of life. Moreover, illegal drug use perpetuates damaging stereotypes and stigmas related to addiction, mental health, and socioeconomic status. Consequently, law enforcement agencies, policymakers, and communities face significant hurdles in their efforts to maintain order and uphold societal standards of conduct amidst the prevalence of illegal drug use.

The utilization and distribution of illegal drugs frequently result in behaviors that disturb public peace and safety, thus categorizing them as public order offenses. Drug-related crimes encompass activities such as trafficking, dealing, possession, and drug use in public spaces, alongside drug-related violence. These actions elevate public safety concerns by increasing crime rates, including instances of theft, assault, and property crimes (Stamm, 2020). Additionally, regions with high incidences of drug use often witness heightened levels of disorder, such as loitering, vandalism, littering, and other public disturbances. The presence of drug users in public spaces fosters an atmosphere of fear and unease, detrimentally impacting local businesses and community members. Consequently, law enforcement agencies frequently target drug-related offenses as part of their endeavors to uphold public order and safety.

Illegal drug use is often associated with behaviors deemed indecent or offensive in public settings, rendering it a public decency crime as well. The visibility of drug use in public spaces, such as parks, streets, or public transportation, can be disruptive, offensive, and distressing to members of the community, particularly in areas frequented by families, children, and tourists. Moreover, drug paraphernalia left in public places, such as needles and syringes, can pose health hazards and create an unsightly environment. Additionally, the visible presence of drug users in public spaces may contribute to a sense of discomfort and insecurity among residents, detracting from the overall sense of safety and well-being in the community.

2.1.1.2.3 Loitering and Vagrancy

Overall, loitering and vagrancy are considered public order and public decency crimes due to their perceived negative impact on public spaces, community safety, and social harmony. Loitering typically involves lingering or idling in a public place without a clear purpose, often associated with behaviors like congregating in groups, panhandling, or engaging in drug-related activities. This behavior can infringe on public order by creating an atmosphere of unease or discomfort among residents and visitors and disrupting the peace of public spaces. Additionally, loitering can be seen as a form of disorderly conduct that disrupts the peace and tranquility of public spaces, leading to potential conflicts or disturbances.

Vagrancy, on the other hand, refers to being homeless or without means of support, leading individuals to resort to begging or petty crimes for survival. This condition frequently entails actions such as sleeping in public spaces or participating in loitering, which are often perceived as disruptive and antisocial, thereby violating public order. Additionally, homeless individuals may engage in activities like public urination or defecation, which contravenes public decency and raises concerns about public safety and cleanliness, especially in urban areas with high rates of homelessness.

While laws and ordinances are often enacted to regulate loitering and vagrancy to maintain public order and uphold societal standards, there is debate about their enforcement, as they may disproportionately affect marginalized or vulnerable populations, such as the homeless or those struggling with mental illness or substance abuse issues (American Civil Liberties Union of California, 2021). As a result, efforts to address loitering and vagrancy should ideally involve a balance between public safety considerations and the protection of individual rights and dignity.

2.1.1.3 Economic Crimes

Economic crimes encompass a broad spectrum of illegal activities aimed at achieving financial gain through fraud, manipulation, or deceptive tactics, thereby causing financial harm to victims and eroding trust in economic systems. These offenses typically target individuals, businesses, or government entities and may involve practices such as embezzlement, money laundering, insider trading, bribery, and tax evasion. Given their potential to undermine financial institutions, market integrity, and public confidence, economic crimes represent a significant challenge for law enforcement agencies and regulatory bodies worldwide.

2.1.1.3.1 Larceny

Larceny is one type of economic crime that refers to the unauthorized taking and removal of another person’s property with the intent to permanently deprive the owner of that property. This type of theft crime encompasses the wrongful appropriation of goods or belongings without the owner’s consent. Typically, larceny entails physically removing property, such as shoplifting items from a store or stealing goods. However, it differs from robbery in that it does not involve the use or threat of force against the victim. Larceny can occur in various contexts, including theft from individuals, businesses, or even public spaces, and may involve a wide range of items, from tangible goods like money, electronics, or jewelry to intangible assets like intellectual property or confidential information. The severity of larceny charges and penalties varies depending on factors such as the value of the stolen property, jurisdictional laws, and the circumstances surrounding the theft.

Figure 2.5

An image of a faceless hacker in a dark hooded sweatshirt sitting and typing at a keyboard, with binary code running across the foreground.
A stark reminder of the anonymous nature of online content creators and the unknown motives behind their messages, highlighting the real dangers of evoking emotional responses among readers that can incite fear, hatred, and violence within our society./ Photo Credit: David Whelan, CC0 Public Domain 1.0
2.1.1.3.2 Cybercrime

Cybercrime encompasses a vast array of illegal activities conducted through digital means, including but not limited to hacking, malware distribution, phishing, identity theft, and online fraud. While the motivations behind cybercrimes can vary widely, many of these activities ultimately have economic implications. For example, hackers may breach the security systems of financial institutions or businesses to access sensitive financial data, such as credit card numbers or bank account information, which they can then exploit for monetary gain through fraudulent transactions or selling the stolen data on the dark web. Similarly, cybercriminals may deploy ransomware attacks targeting individuals or organizations, encrypting their data and demanding payment in exchange for its release. Additionally, online fraud schemes, such as bogus investment opportunities or deceptive online marketplaces, can defraud victims of significant sums of money. In essence, while not all cybercrimes are explicitly motivated by economic gain, many of them ultimately result in financial losses for individuals, businesses, or even entire economies (Brando et al., 2022; Iftikhar, 2024).

2.1.1.3.3 White-Collar

White-collar crime encompasses financially motivated offenses perpetrated by individuals or organizations in positions of trust or authority. These non-violent crimes involve deceit, manipulation, or abuse of power for monetary gain and include activities such as fraud, embezzlement, insider trading, bribery, money laundering, and tax evasion. Perpetrators often leverage their knowledge of financial systems and regulations to carry out illicit activities, leading to significant financial losses and undermining the integrity of financial markets and institutions (Barnett, 2000). Detecting and prosecuting white-collar crimes can be challenging due to their complexity and sophisticated methods, trial costs, necessitating specialized investigative techniques and expertise.

Figure 2.6

A powerful image depicting a line graph emanating from the barrel of a gun, with a close-up of a woman's fearful eye in the background.
This visual metaphor symbolizes the process of reducing violent acts, particularly gun-related crimes, into mere statistics, despite the profound harm they cause to victims and society. Illustration from https://netivist.org. Photo Credit: Created for netivist.org, Caption on original illustration: “This image was created for netivist.org. If you want to use it you simply need to attribute it by linking to this page or to https://netivist.org.

2.2 Crime Statistic Data Sources

Crime statistics are vital for understanding and addressing criminal behavior and trends. Some of the largest and most reliable sources of U.S. crime data include the Uniform Crime Report (UCR), which compiles official data on crime reported to law enforcement agencies across the United States, providing insights into reported crimes and arrests. Complementing the UCR is the National Incident-Based Reporting System (NIBRS), which provides detailed information on each crime incident, offering a more comprehensive view of crime patterns. The National Crime Victimization Survey (NCVS), which gathers data on personal and household victimization through surveys and interviews, including individual experiences with criminal activities as well as crimes that may not be reported to police officials, thereby offering a broader perspective. Additionally, self-report crime surveys collect data by directly questioning individuals about their involvement in illicit activities, often uncovering unreported crimes and shedding light on underrepresented demographics. Together, these sources provide multifaceted insights into the complex landscape of crime, crucial for researchers, policymakers, and law enforcement agencies, enabling informed decision-making and targeted interventions aimed at fostering safer communities.

Crime research methods encompass a diverse range of approaches employed to understand and address specific aspects of criminal behavior and its impact. General methods pertaining to social research include quantitative research, which involves collecting and analyzing numerical data to identify patterns and correlations, as well as qualitative research, which focuses on understanding the underlying meanings and motivations behind criminal behavior through in-depth interviews, observations, and case studies. Additionally, experimental research methods involve manipulating certain variables to assess their impact on criminal behavior, while observational research involves observing and recording criminal activities in natural settings. These varied research methods contribute to a comprehensive understanding of crime, informing evidence-based policies and interventions to mitigate criminal behavior and bolster public safety.

Table 2.1

Impactful Moments in Criminal Justice: Key Milestones in Criminal Justice Data

Date

Milestones

1930

First publication of the Uniform Crime Report (UCR).

1937

Law Enforcement Officers Killed and Assaulted (LEOKA) data collection begins.

1972

The Federal Bureau of Investigation (FBI) publishes Hate Crime Statistics.

1973

First publication of the National Crime Victimization Survey (NCVS).

1973

The Sourcebook of Criminal Justice Statistics (SCJS) begins publishing criminal justice data.

1975

The University of Michigan administers the Monitoring the Future (MTF) survey.

1979

The Bureau of Justice Statistics (BJS) is established.

1989

The National Incident-Based Reporting System (NIBRS) begins publishing comprehensive data on crime incidents.

1991

The MTF includes eighth and tenth grade students in its survey.

2004

The NCVS implements a Spanish version of the survey.

2013

The UCR revises its definition of rape.

2019

The FBI begins gathering national data on police use-of-force incidents.

2021

NIBRS replaces UCR.

Note. Chart demonstrating key advancements in U.S. criminal justice data. Compiled by Wesley B. Maier, Ph.D., & Kadence C. Maier.

2.2.1 Uniform Crime Report (UCR)

In 1930, with the assistance of the International Association of Chiefs of Police, Congress passed legislation authorizing the Attorney General and the Federal Bureau of Investigation (FBI) to develop a program to monitor and quantify crime rates across the U.S. (An Act Establishing Division of Identification and Information, 1930). This program, known as the Uniform Crime Report (UCR) (Stogner, 2015), collects data from local and state police departments who voluntarily provide the FBI with information on reported crimes and arrests for specific offenses. For the next 90 years, the UCR became the most readily available source of national crime data.

By the 21st century, the majority of police agencies, covering 98% of the U.S. population, provided data to the FBI (FBI, 2014). To organize this massive amount of data, the UCR separates crime data into two primary groups: Part I offenses and Part II offenses. The UCR collects reported crime data on 10 Part I offenses, which are seen as more serious criminal offenses and include criminal homicide, rape, robbery, aggravated assault, burglary, larceny-theft, motor vehicle theft, arson, human trafficking for commercial sex acts, and human trafficking for involuntary servitude. Part II offenses are considered less serious and include only arrest data rather than reported data. Part II offenses consist of 20 less serious crimes, such as vandalism, gambling, simple assault, and vagrancy.

The UCR presents data in three primary ways. First, it provides raw numbers of arrests or reported crimes. For example, in 2019, there were approximately 16,425 murders reported nationwide (FBI, 2020a). Second, the UCR presents crime rates using per capita of a rate per 100,000 people. Simply stated, this is achieved by dividing the numerical value by the total population and subsequently multiplying the result by 100,000. To illustrate, let’s revisit the previous example of 16,425 estimated murders in the U.S. in 2019. By dividing this figure by the estimated total U.S. population of 328 million, then multiplying it by 100,000 (16,425 / 328,000,000 X 100,000), we ascertain that the 2019 per-capita murder rate in the U.S. was approximately 5.0 murders per 100,000 people. Third, the UCR supplies a year-to-year comparison with information regarding changes in crime rates from previous years. For example, there was a 0.2% decrease in the U.S. murder rate from 2018 to 2019 (FBI, 2020a).

2.2.1.1 Drawbacks of the Uniform Crime Report

One drawback of the UCR data is its reliance on reported crimes, which means that only incidents reported to the police are included. As discussed in the [crossref:1]previous chapter[/crossref], not all criminal activities are brought to the attention of law enforcement, resulting in underrepresentation of the total number of criminal acts (Levitt, 1998). Additionally, the voluntary nature of police department participation in the UCR program poses another challenge. When a department chooses not to share crime data with the FBI, crime rates for that jurisdiction are estimated by comparing them with those in nearby jurisdictions of similar size. Furthermore, even when departments do participate and provide data voluntarily, variations in laws, policies, and procedures regarding the collection and recording of crime can lead to discrepancies. The fact that some departments may report certain criminal behaviors that others do not further complicates the accuracy and reliability of the collected UCR data.

One significant challenge with UCR data is the Hierarchy Rule, which establishes a ranking of offenses based on their severity. Under this rule, murder ranks higher than aggravated assault, which in turn ranks higher than larceny (FBI, 2015). According to this rule, if multiple offenses occur in a single criminal incident, only the most serious offense is counted. For instance, if a murder takes place during a burglary, only the murder would be recorded in the UCR data because it ranks higher in the hierarchy. This presents a notable issue as it results in fewer crimes being recorded than actually occur, providing an inaccurate understanding of the full scope of criminal activity. Additionally, it can create the impression that more serious crimes constitute a larger proportion of criminal activity than they do in reality.

Another drawback of the UCR is that it does not distinguish between attempted and completed Part I offenses. This means that if an individual is stopped before completing a Part I offense and the action is reported, it is recorded as a completed crime in the UCR database. This can lead to an overestimation of the actual number of Part I offenses occurring.

Over the years, numerous modifications have been made to the UCR, including the addition of information concerning incidents involving police officers being killed or assaulted, as well as data on hate crimes. While these changes have generally been beneficial, changes in definitions have sometimes been problematic, as they can cause shifts in recorded statistics and lead to misconceptions when comparing statistics from before and after the definition change.

For instance, one of the more controversial issues with the UCR was the definition used for rape between 1929 and 2012. Prior to 2013, the definition of forcable rape used in UCR data was “the carnal knowledge of a female focibly and against her will” (FBI, 2017, p. 3). This definition meant that only females were included in rape statistics, and only rapes involving force or the threat of force were recorded. As shown in Figure 2.7 below, changing the definition of rape in 2013 to include men and omitting the use-of-force standard significantly altered the number of rapes recorded in the UCR.

Figure 2.7

Chart illustrating a notable increase in recorded rape cases from 2013 onwards, attributed to revisions in the definition of rape in 2013.
UCR data for recorded rape cases in the U.S. from 2000 to 2016 via the Crime Data Explorer (FBI, 2016). The notable increase from 2013 onwards can be attributed to revisions in the definition of rape in 2013. / Photo Credit: Federal Bureau of Investigation, Public Domain

2.2.2 National Incident-Based Reporting System (NIBRS)

In 1982, the Bureau of Justice Statistics (BJS) along with the FBI conducted a study to determine the feasible and benefits of adapting a more comprehensive national crime data collection system (Poggio et al., 1985). The results of the study indicated a significant need to improve the data-gathering process to include more detailed information in several areas including weapon use, gang violence, and crimes against children (Strom & Smith, 2017). In 1989, the National Incident-Based Reporting System (NIBRS) was introduced (FBI, 2018). However, it was not until 2021 that the NIBRS became the mandated national standard for law enforcement agencies reporting crime data to the FBI (BJS, 2022a).

The NIBRS differs from the original UCR data collection practices in several key ways. First, UCR only used aggregate data, which does not include specifics of each crime. In contrast, the NIBRS incorporates disaggregated data, providing demographic information about the offender and victim, the relationship between the victim and offender, details on the context of offense characteristics, and incident-level data (Loftin & McDowall, 2010). Secondly, the NIBRS does not adhere to the Hierarchy Rule and can include up to ten offenses per incident. Additionally, the NIBRS encompasses a broader range of crime offenses. For example, while the UCR included only 10 Part I offenses, the NIBRS includes 49 Group A offenses, encompassing high-level crimes such as murder, assault, and arson, as well as ten Group B offenses, which cover low-level crimes such as public drunkenness, curfew violations, and writing faulty checks.

2.2.2.1 Weaknesses of the National Incident-Based Reporting System

While the data provided by the NIBRS is superior to the traditional UCR data, it has a number of weaknesses. One prevailing issue is the failure of police departments to report their data to the NIBRS. For instance, in 2022, only 77% of U.S. police agencies submitted data to the NIBRS (FBI National Press Office, 2023). Although an additional 16.6% of departments report UCR data during that same year, the DOJ and FBI must devise crime estimates for all jurisdictions that fail to submit their data to the NIBRS. These approximations hinder the overall strength and accuracy of the statistics produced by NIBRS, which could be improved if more police agencies reported their crime data to the NIBRS. Lastly, while the NIBRS data is much more robust than the original UCR data, it still fails to capture unreported crimes. This limitation makes it difficult to accurately compare crime rates across cities, counties, and states. For example, if citizens lack trust in the police or believe the police will be unable to solve the crime, they might be less inclined to report crimes. Similarly, if a police department is understaffed or focused only on serious crimes, it might fail to report all crimes it deems unsolvable or insignificant.

2.2.3 National Crime Victimization Survey (NCVS)

Crime victimization surveys are a valuable tool for capturing some unreported crimes or “dark figures.” Presently, the nation’s primary victimization survey is the National Crime Victimization Survey (NCVS). Commencing in 1973 through a joint effort of the Law Enforcement Assistance Administration [GL/] (LEAA) and the U.S. Census Bureau, the NCVS has been conducted annually (Eckroth, 2023). Despite the disbandment of LEAA in 1979, the BJS continued the yearly administration of the survey.

The NCVS collects a plethora of victimization data through interviews and surveys of individuals aged 12 years and older (Morgan & Smith, 2023). One of the most beneficial aspects of the NCVS is its ability to capture dark figures by measuring unreported crimes. This is invaluable for understanding the extent of underreported crimes and the reasons why victims may choose not to report crimes to the police. Additionally, the data collected by the NCVS provides crucial information about the nature of the crime, the victim, the relationship between the victim and offender, and the consequences of victimization.

More specifically, the NCVS collects highly detailed demographic information from victims, including age, income, race, ethnicity, gender, and geographical location. This information plays a pivotal role in identifying patterns and disparities in victimization rates, enabling tailored prevention and intervention efforts for underrepresented populations. Moreover, due to its annual administration, the NCVS facilitates longitudinal analysis. These analyses enable researchers, law enforcement agencies, and policymakers to identify changes in crime patterns over time, leading to more effectively adjusted crime prevention strategies.

2.2.3.1 Shortcomings of the National Crime Victimization Survey

Like any research and data collection method, the NCVS has its limitations. One such shortcoming is its exclusion of certain populations, including children younger than 12, homeless individuals, and those living in institutional settings such as nursing homes and correctional facilities. As a result, the data from the NCVS underrepresents these groups and fails to provide a comprehensive understanding of all cross-sections of society. Another limitation is its predominant focus on personal and property crimes, often neglecting other types of crime such as white-collar crime, organized crime, and cyber crimes.

Another challenge with the NCVS, akin to all interview and survey data collection methods, is the potential variation in the interpretation of victimization definitions among respondents and interviewers. This variability can result in inconsistencies in both reporting and classification of victimization incidents. Furthermore, some respondents may encounter difficulties accurately recalling details about their victimization experiences, including the timing, nature, and circumstances of the crime.

2.2.4 Self-Report Surveys

Another method of monitoring crime is through the use of self-report surveys. Unlike crime data collected through police reports or victimization surveys, self-report crime surveys directly inquire about individuals’ participation in illegal activities, irrespective of whether or not the activity was reported to the police. These surveys are particularly effective in uncovering data on victimless crimes, where there may not be a direct victim, such as illicit drug use. Typically, these surveys are administered anonymously to large groups of individuals, often in school, community, or household settings.

One of the largest self-report crime surveys is the Monitoring the Future (MTF) national survey. Administered annually by the University of Michigan Survey Research Center since 1975 (Monitoring the Future, n.d.), the original MTF survey was distributed to approximately 16,000 senior high school students in 133 public and private high schools. Since 1991, the MTF survey has expanded to include 8th, 10th, and 12th graders, totaling around 50,000 students and 420 public and private schools yearly. Additionally, a subset of participants receives yearly follow-up surveys throughout secondary school, college, and adulthood. This longitudinal approach allows researchers to gain insight into how perceptions of crime and drug use evolve over the lifespan.

2.2.4.1 Limitations of Self-Report Crime Surveys

Self-report crime surveys, such as the MTF, offer valuable insights into “dark figures” and juvenile perspectives on crime and drug use. However, these surveys also have limitations. Firstly, despite being anonymous, participants may still feel ashamed or fearful of providing truthful information. Additionally, individuals may exaggerate their criminal behavior or forget important details of these acts. Furthermore, like any survey, misinterpretation of the questions may lead participants to provide inaccurate information.

Figure 2.8

Image of a magnifying lens placed atop an array of colorful charts and graphs.
Analyzing Data to Uncover Patterns of Crime/ Photo Credit: Oscar de Lama,  CC BY NC 2.0

2.3 Crime Trends

Certain types of crime fluctuate in prevalence over time, while others remain relatively constant. By analyzing statistical data from the sources discussed in the previous unit, we can identify these patterns in criminal behavior. However, analyzing statistical data alone is insufficient for obtaining a comprehensive understanding of crime trends. Qualitative and contextual factors such as the implementation or removal of laws, changes in population density among criminogenic age groups, and even weather conditions can significantly influence contemporary crime trends. Considering these additional factors is imperative for obtaining more accurate interpretations of crime statistics that curtail misleading conclusions. The following section provides a general overview of current nationwide crime trends, highlighting recent changes in the landscape of criminal activity and some of the factors underpinning these shifts.

2.3.1 UCR and NIBRS Crime Trends

The UCR and NIBRS provide valuable data for identifying short- and long-term crime trends in America. According to UCR and NIBRS data, U.S. crime rates prior to the 1960s, particularly violent crime rates, remained fairly consistent (Blumstein & Wallman, 2006). However, crime rates in most categories began to increase throughout the 1960s, 1970s, and 1980s. By contrast, both violent and property crime rates steadily decreased between the early 1990s and the 2010s. During the early 2020s, certain types of crime, such as homicide and auto theft, experienced slight increases, while other forms of criminal activity remained relatively constant over this same time period.

2.3.1.1 Violent Crime

This section will discuss violent crime trends in the U.S. using UCR and NIBRS data, focusing on homicide, rape, robbery, and aggravated assault. By examining these data sources, we can identify patterns and shifts in violent crime rates over time. Historical data reveals a significant rise in violent crime from the 1960s through the 1980s, followed by a notable decline starting in the early 1990s and continuing into the 2010s (Blumstein & Wallman, 2006). Despite this overall downward trend, recent years have seen slight increases in certain violent crimes, such as homicide and aggravated assault, while burglary has steadily decreased over the past several decades.

Figure 2.9

Chart illustrating the homicide rates in the U.S. from 1985 to 2022, showing fluctuations with notable peaks in the early 1990s and early 2020s, followed by declines.
Illustrates the per capita homicide rate in the U.S. between 1985 and 2022 (FBI, 2022d). Data from the UCR indicate that prior to 1965, homicide rates stayed below 5 homicides per 100,000 people. In the 1970s, the rates oscillated between 8 and 10 homicides per 100,000 people (Blumstein & Wallman, 2006). In 1980, the homicide rate reached an all-time high of 10.2 per 100,000 people before dropping over the subsequent five years, only to rise again to the second-highest rate of 9.8 homicides per 100,000 people in 1991. Following a sharp decline in the 1990s, the homicide rate remained below 6 per 100,000 people throughout most of the 2000s. Despite a short-lived spike in 2020 and 2021, the rate began to decline in 2022 (FBI, 2022d). / Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Figure 2.10

UCR and NIBRS Rape Crime Rates in the U.S. (1985-2022)

""
Rate per 100,000 population (FBI, 2022g). Chart illustrating the rape rates in the U.S. from 1985 to 2022, depicting trends under the traditional definition of rape and highlighting the sharp increase following the adoption of the revised definition./ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Figure 2.10 illustrates rape rates per capita in the U.S. between 1985 and 2022. Overall, there has been a gradual decline in rape rates since the early 1990s (FBI, 2022g). While UCR and NIBRS data are beneficial for evaluating rape rates, it is essential to consider legal and cultural changes. For example, as discussed in Section 2.2.1.1, the UCR changed the definition of rape in 2013, leading to a sharp increase in recorded incidents. Additionally, providing more resources and support to victims may have increased the willingness of victims to report rape. Consequently, it is difficult to discern if the number of actual rapes has changed over this time period.

Figure 2.11

Chart illustrating robbery crime rates in the U.S. from 1985 to 2022, depicting a relatively consistent decline from their peak in 1991.
Rate per 100,000 population (FBI, 2022h)./ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Because homicide is often considered the “ultimate violent act,” police tend to allocate more resources and effort to investigating and recording this crime. Similarly, robbery is another offense that is well-defined in law and receives intensive police attention (Blumstein & Wallman, 2006). Like homicide, the rates of robbery have decreased since the peak in 1991, when there were over 250 robberies per 100,000 people. The robbery rates in 2022 were less than 66 per 100,000 people, which is lower than the rates during the 1960s (Blumstein & Wallman, 2006; FBI, 2011, 2022h).

Figure 2.12

Rate per 100,000 population (FBI, 2022a)
Rate per 100,000 population (FBI, 2022a)/ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Between 1972 and 1992, aggravated assault rates grew by 132%, from just under 200 per 100,000 people to close to 450 per 100,000 people (Blumstein & Wallman, 2006). According to UCR and NIBRS data demonstrated in Figure 2.12, the rate of aggravated assault crime decreased since the early 1990s, similar to homicide and robbery rates during this period (FBI, 2022a). Data from the NIBRS indicates that aggravated assault rates dropped to less than 250 per 100,000 people in 2013 but rose to almost 280 per 100,000 people in 2020. However, it is essential to acknowledge the subjectivity inherent in how police officers and departments categorize aggravated and simple assault when analyzing aggravated assault data (Blumstein & Wallman, 2006). Understanding this subjectivity is crucial as it can impact the comparability and accuracy of crime statistics over time and across different jurisdictions, influencing our interpretation of trends and the development of effective policies.

Careers in Criminal Justice: Crime Analyst Analyst

Figure 2.13

Vital Statistical Findings Arising from Extensive Analysis

image

A career as a crime analyst offers an opportunity to play a vital role in law enforcement and public safety by utilizing data and analytical tools to understand and address criminal activity. Crime analysts are responsible for collecting, analyzing, and interpreting data related to crime patterns, trends, and hotspots. By identifying emerging crime trends and patterns, crime analysts help law enforcement agencies allocate resources effectively, develop crime prevention strategies, and enhance public safety initiatives.

To excel in this role, individuals need strong analytical and critical thinking skills, as well as proficiency in data analysis techniques and statistical software. Effective communication skills are also essential, as crime analysts often present their findings to law enforcement officials, policymakers, and other stakeholders. Additionally, attention to detail and the ability to work under pressure are crucial for success in this fast-paced environment.

According to data from Jobdescription.org, the annual salary for crime analysts varies depending on factors such as experience, location, and the employing organization (2023). On average, crime analysts can expect to earn between $59,000 and $84,000 per year, with opportunities for advancement and higher earning potential with additional experience and specialized skills.

Education requirements for crime analysts typically include a bachelor’s degree in criminal justice, criminology, sociology, statistics, or a related field. Some positions may require a master’s degree or specialized training in data analysis or crime mapping techniques. Additionally, obtaining certifications such as the Certified Crime Analyst (CCA) credential from the International Association of Crime Analysts (IACA) can enhance job prospects and credibility in the field.

Crime analysts may work in a variety of settings, including law enforcement agencies, government agencies, consulting firms, research institutions, or nonprofit organizations. They may work standard office hours, but their schedules may vary depending on the demands of their role and the needs of the organization. The work environment can be dynamic and challenging, with opportunities to make meaningful contributions to public safety efforts and the criminal justice system.

Figure 2.14

Close-up of black-gloved hands using a pry bar to forcibly open a locked exterior door.
Forced Entry: Threatening Property and Security/ Photo Credit: Rafael Classen rcphotostock.com, Pexels License

2.3.1.2 Property Crime Trends

Similar to violent crimes, data from the UCR and NIBRS indicate that property crime rates have declined over the past 40 years. The following sections will examine four types of property crimes—arson, burglary, larceny, and auto theft—to illustrate trends in property crime in the U.S.

Figure 2.15

UCR and NIBRS Arson Crime Rates in the U.S. (1985-2022)

Charts shows UCR and NIBRS arson crime statistics trends between 1985 and 2022, indicating a relatively steady decline since its peak in 1986.
Rate per 100,000 population (FBI, 2022b)/ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

As illustrated in Figure 2.15, arson crime trends have decreased considerably over the past 35 years (FBI, 2022b). The motivations for arson can vary greatly, including covering up evidence for other crimes, committing insurance fraud, protesting, or stemming from mental health issues such as pyromania. Additionally, arson is difficult to investigate as the evidence is often destroyed in the fire. Even when investigators determine that a fire was caused by arson, only a small percentage (21%) of offenders are apprehended (Brett, 2004). Increased surveillance, such as home security cameras, and improved mental health practices may help explain the national decrease in arson rates. Research has also identified a pattern linking arson to motor vehicle theft, showing an observed increase in vehicle arson in areas or during periods with higher rates of motor vehicle theft and joyriding (Potter, 2000).

Figure 2.16

UCR and NIBRS Burglary Crime Rates in the U.S. (1985-2022)

The chart shows UCR & NIBRS burglary crime statistics between 1985 and 2022.
Rate per 100,000 population (FBI, 2022c)./ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

According to the NIBRS, burglary and breaking and entering are defined as “the unlawful entry into a building or other structure with the intent to commit a felony or a theft” (FBI, 2012, p. 2). While larceny/theft offenses are defined by the NIBRS as “the unlawful taking, carrying, leading, or riding away of property from the possession, or constructive possession, of another person” (FBI, 2012, p. 4). As illustrated in Figure 2.16 and Figure 2.17, both burglary and larceny exhibited comparable trends between the mid-1980s and 2022 (FBI, 2022c).

Figure 2.17

UCR and NIBRS Larceny Crime Rates in the U.S. (1985-2022)

Chart illustrating the larceny crime rates in the U.S. from 1985 to 2022, showing a peak in 1991, followed by a steady decline and a slight increase in 2022.
Rate per 100,000 population (FBI, 2022e)./ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

The analysis of larceny crime rates in the United States from 1985 to 2022, as depicted in Figure 2.17, reveals notable trends. Initially, there was a discernible peak in 1991, indicative of heightened criminal activity during that period (FBI, 2022e). However, subsequent years witnessed a consistent downward trajectory in larceny rates, possibly reflecting effective crime prevention measures or shifting societal dynamics. Despite this overall decline, there was a slight uptick observed in 2022, suggesting potential fluctuations in crime patterns or the efficacy of law enforcement strategies in recent years. However, to fully understand the reasons underpinning these criminal behavior trends, additional qualitative information is needed to complement the quantitative data provided by the figures.

Figure 2.18

Chart illustrating the crime rate of motor vehicle thefts in the United States from 1985 to 2022, showing a peak in 1991 followed by a general decline, reaching its lowest point in 2014 before beginning to slightly increase.
Rate per 100,000 population (FBI, 2022f)/ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Motor vehicle theft, as depicted in Figure 2.18, peaked in the early 1990s, followed by a decrease until 2019 (FBI, 2022f). However, there has been a small increase in motor vehicle thefts in 2020, 2021, and 2022, prompting questions about the factors contributing to this recent uptick. While advancements in technology and theft-prevention features in cars would typically lead to a decrease in car thefts, the evolution of technology also enhances offenders’ capabilities to commit such crimes. For instance, a popular TikTok trend in 2021 demonstrated how to steal 2010-2021 Kia and Hyundai vehicles using a USB cord and mechanical key (DiLella & Day, 2022). As such, further qualitative research is essential to comprehensively understand these trends and devise effective strategies to combat auto theft in the evolving technological landscape.

Figure 2.19

Image showing a magnifying lens placed atop a clipboard of charts and graphs, with a laptop nearby.
Analyzing Crime Data: Tools of the Trade/ Photo Credit: Leeloo The First, Pexels License/ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

2.3.2 NCVS Crime Trends

The following section provides an analysis of NCVS crime data spanning from 1993 to 2022, focusing on four crime types: rape/sexual assault, robbery, motor vehicle theft, and burglary. These specific crime categories were selected to offer insight into a broad spectrum of criminal trends, encompassing both violent and property crimes. It is crucial to consider the data collection method, which involves surveying approximately 240,000 individuals from around 150,000 households (Harrell et al., 2009). While this is a large population for a survey, this approach represents a significantly smaller population within the dataset compared to NIBRS and UCR data. Therefore, the NCVS data will yield more varied results from year to year than the NIBRS and UCR data. This variability could stem from factors such as changes in reporting behavior, shifts in survey demographics, or fluctuations in respondents’ perceptions of crime or interpretations of survey questions.

Figure 2.20

Chart illustrating the rates of rape/sexual assault from 1993 to 2022, displaying a peak in 1993 followed by an overall decline with notable variation in the subsequent years.
“95% C.I.”: 95% confidence interval. “S.E.”: Standard error. *Estimates for 2006 should not be compared to other years. See User’s Guide for more information (Bureau of Justice Statistics [BJS], 2022d)./ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

According to the NCVS data presented in Figure 2.20, there has been a notable decrease in rape/sexual assault victimization from 1993 to 2022 (BJS, 2022d). However, it’s important to note that the year-to-year variance in these rates appears to be more erratic compared to the NIBRS rape data illustrated in Figure 2.10. Despite this variation, the overall trend exhibits a similar pattern of decline.

Figure 2.21

Chart illustrating the robbery crime rates in the U.S. from 1993 to 2022, displaying a peak in 1993 followed by a sharp decline until 2022, with slight fluctuations in subsequent years despite an overall decline.
“95% C.I.”: 95% confidence interval. “S.E.”: Standard error. *Estimates for 2006 should not be compared to other years. See User’s Guide for more information (BJS, 2022e)/ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Figure 2.21 illustrates the trends in robbery victimization between 1993 and 2022 (BJS, 2022e). Overall, there has been a substantial decrease in robberies during this period. The findings suggest that participants in the NCVS were 250% more likely to report being a victim of robbery in 1993 than in 2022. Despite this long-term decline, the survey indicates a slight increase in robberies in 2021 and again in 2022, mirroring a common trend observed in several crime category charts.

Figure 2.22

NCVS Motor Vehicle Theft Crime Rates in the U.S. (1993-2022)

Chart depicting the motor vehicle theft crime rates in the U.s. from 1993 to 2022, showing a peak in 1993 followed by a subsequent decline until 2014, with rates remaining relatively steady until a slight increase in 2021.
95% C.I.”: 95% confidence interval. “S.E.”: Standard error. *Estimates for 2006 should not be compared to other years. See User’s Guide for more information (BJS, 2022c)/ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Similar to the trends observed in violent crimes reported in the NCVS, property crimes, such as motor vehicle theft (depicted in Figure 2.22), have experienced significant declines over the past 30 years (BJS, 2022c). This pattern is evident in the decrease in reported motor vehicle thefts between 1993 and 2020. However, there was a slight increase in respondents reporting being victims of motor vehicle theft in 2021 and 2022, which corresponds with data concerning other criminal activity patterns during this same timeframe.

Figure 2.23

Chart depicting burglary crime rates in the U.S. from 1993 to 2022, indicating a peak in 1993 followed by a relatively steady decrease, reaching its lowest point in 2021.
“95% C.I.”: 95% confidence interval. “S.E.”: Standard error. *Estimates for 2006 should not be compared to other years. See User’s Guide for more information (BJS, 2022b)./ Photo Credit: Wesley B. Maier, Ph.D., CC BY 4.0

Consistent with trends in other property crimes, burglary victimization (see Figure 2.23) has declined among respondents over the past 30 years (BJS, 2022b). When comparing findings concerning burglary trends from the UCR/NIBRS (see Figure 2.16) with their counterpart findings from the NCVS, a consistent pattern emerges.

Ethics in Criminal Justice: Proper Understanding of Crime Research and Data

Figure 2.24

Word cloud illustrating the multifaceted aspects of research ethics, including data security, reporting honesty, integrity, participant safety, anonymity, fact-checking, contribution to science, morals, vulnerable populations, participant consent, rules and regulations, experimental design, human subjects, institutional review board, confidentiality, privacy, official clearance, and quality control.
The Various Components of Ethical Research/ Photo credit: Kadence C. Maier, CC BY 4.0

Data misrepresentation and misinterpretation are significant concerns when utilizing national crime data to support policies, programs, and theories of crime. Misrepresented and misinterpreted data can reinforce stereotypes, leading to biased conclusions and ineffective or even harmful policies (Moore et al., 2022).

For instance, consider a scenario where a police officer believes that drivers of blue cars are more likely to drink and drive. Acting on this bias, the officer pulls over twice as many blue cars as red cars. Predictably, the officer will arrest more individuals in blue cars for drinking and driving. This biased enforcement results in skewed data that reflects a higher incidence of drinking and driving among blue car drivers, but the underlying bias influencing the officer’s behavior is not captured in the data.

As a result, the data appears to validate the officer’s initial bias, reinforcing the misconception that blue car drivers are more prone to such offenses. This faulty conclusion can then influence departmental practices and policies, leading other officers to similarly target blue cars. Over time, this creates a cycle of bias and discrimination against drivers of blue cars, rooted in misrepresented and misinterpreted data.

Such distortions in data can have far-reaching consequences. Policies and programs based on flawed data can misallocate resources, target the wrong populations, and perpetuate unjust practices. For example, if national crime data inaccurately represents certain communities as having higher crime rates due to biased policing practices, these communities may face increased surveillance and law enforcement presence, exacerbating tensions and mistrust.

Moreover, crime data can easily be manipulated to mislead policymakers and the public about crime trends. This is particularly problematic when dealing with percentage increases or decreases in rare or low-base-number crimes. For example, if a small city typically averages one murder per year but then experiences a domestic violence situation where a husband kills his two children and wife, the murder rate in that city will increase 200% in one year. This dramatic increase could lead people to believe that the city has become significantly more dangerous, even though it is based on a rare and isolated incident. Such interpretations can cause issues in law enforcement practices, resource allocations, and policy implementation.

To prevent these issues, it is crucial to ensure that crime data is accurately collected, reported, and analyzed. This involves implementing rigorous training for law enforcement to minimize biases, adopting transparent data collection methodologies, and conducting regular audits to identify and correct any disparities. Additionally, involving community stakeholders in the analysis and interpretation of crime data can provide valuable insights and help create more equitable and effective policies.

Figure 2.25

Image of a female scientist writing statistical figures on a dry erase board.
Quantifying Crime: The Metrics Behind the Statistics/ Photo Credit: Kampus Production, Pexels License

 

Summary

Throughout this chapter, we explored the intricate methodologies, complexities, and challenges inherent in measuring crime and compiling accurate statistics. Our investigation shed light on the implications of quantifying crime within societies, considering the multifaceted nature of data collection and the nuanced interpretation of statistical trends. In navigating the landscape of crime analysis, we examined the diverse tools and techniques utilized by researchers, policymakers, and law enforcement agencies to assess the prevalence and patterns of crime within American society.

Collecting accurate crime data is intrinsically challenging due to various factors, including underreporting, differences in reporting practices across jurisdictions, and the limitations of different data collection methodologies. Misinterpretation of data or the lack of transparency in methodology can misconstrue statistics and lead to erroneous conclusions as well as reinforce biases. Therefore, it is critical to carefully collect and review research findings, incorporating a balanced mixture of qualitative and quantitative data. Qualitative data, such as victim and offender interviews, provide context and depth to the numbers, offering insights into the underlying causes and consequences of criminal behavior. Quantitative data, on the other hand, allows for the analysis of broader trends and patterns, facilitating the identification of emerging issues and the evaluation of crime prevention strategies.

Furthermore, the use of multiple methods to corroborate information is essential to provide a comprehensive and reliable picture of crime trends. Utilizing both administrative data, like the UCR and NIBRS, and survey-based data, such as the NCVS, offers a multifaceted approach that helps to mitigate the limitations inherent in each method and affords a more nuanced understanding of crime trends. By triangulating data through the integration of diverse sources and methodologies, researchers can better identify consistent patterns and discrepancies, leading to a more comprehensive and accurate understanding of criminal activity trends. This holistic approach is crucial for developing more effective strategies for crime prevention and intervention.

Understanding crime trends also requires consideration of sociocultural factors that influence both criminal behavior and reporting practices. Changes in societal attitudes, economic conditions, and community engagement can significantly impact crime rates and the perception of safety. For example, shifts in public attitudes toward law enforcement, changes in economic stability, and variations in community cohesion can all influence the prevalence and reporting of crimes. Integrating sociocultural insights with empirical data provides a more holistic view of crime dynamics, enhancing our ability to develop effective interventions and policies.

The analysis of crime patterns over time is crucial for understanding the dynamics of criminal behavior and its impact on communities and society as a whole. By examining trends in violent crimes such as rape/sexual assault and robbery, as well as property crimes like burglary and motor vehicle theft, we highlighted significant shifts in victimization rates over the past several decades. These patterns reveal not only the effectiveness of crime prevention measures but also the evolving nature of criminal activity, influenced by technological advancements, economic conditions, and societal changes.

Our review of various crime trends in the U.S. over the past several decades, utilizing data from the UCR, NIBRS, and NCVS, indicated relatively consistent findings. One prominent pattern evident across these data sources is the substantial reduction in nearly all examined crime rates, notwithstanding occasional fluctuations in specific categories. According to the UCR and NIBRS data, both violent and property crimes have shown significant reductions, with nearly all examined crime types exhibiting an overall decline since the early 1990s. Despite this general downward trend in criminal activity, there have been slight upticks in certain crimes such as homicide, aggravated assault, arson, larceny, and motor vehicle theft in recent years. These increases necessitate a deeper analysis of the macro factors underpinning this large-scale change in criminal behavior that has transpired during the last few years.

Similarly, NCVS data suggested that rape/sexual assault, robbery, motor vehicle theft, and burglary crimes have experienced overall declines since their peaks in the early 1990s. However, rape/sexual assaults exhibited notable year-to-year variations, while robbery, motor vehicle theft, and burglary have experienced slight increases in the last few years. Although these findings parallel those from the UCR and NIBRS, the recent increase in certain types of criminal activity underscores the importance of continuously monitoring and analyzing crime data. This ongoing scrutiny is crucial for maintaining an understanding of evolving crime dynamics and informing effective crime prevention and intervention strategies.

In essence, the integration of comprehensive data analysis with sociocultural context is vital in formulating effective strategies to enhance public safety, allocate resources appropriately, and ultimately reduce crime. As we conclude our examination of crime trends, we recognize the ongoing importance of robust data collection, transparent methodologies, and interdisciplinary perspectives in advancing our understanding and response to crime in society. By critically engaging with these issues, we endeavor to deepen our understanding of crime as a social phenomenon and to contribute to more informed discussions and interventions aimed at addressing its root causes and consequences. Through this exploration, we aim not only to understand the empirical realities of crime but also to delve deeper into its philosophical underpinnings, enriching our comprehension of this complex and enduring facet of human existence.

Review Questions

  1. Discuss the impact of violent crimes on victims, perpetrators, and society as a whole. How does the ripple effect of violence extend beyond immediate individuals involved?
  2. Explain how crime trends in the U.S. have changed over the past 30 years. What are some causes for these changes, and what might we expect in the next 30 years?
  3. Discuss the challenges and limitations associated with recording, preventing and prosecuting economic crimes, particularly in a globalized and digitalized world.
  4. Discuss the significance of measuring crime in the field of criminal justice. Why is it essential for policymakers, law enforcement agencies, and researchers to have accurate crime data?
  5. Discuss the importance of collaboration and interdisciplinary approaches in advancing crime measurement research and practice. How can collaboration between law enforcement, academia, and other stakeholders improve our understanding of crime trends and patterns?
  6. Explore the role of interview research in studying criminal justice issues. How does interviewing individuals, such as law enforcement officials, victims, or offenders, contribute to informed policies and practices within law enforcement agencies and criminal justice systems?
  7. Explain the concept of the dark figure of crime. What factors contribute to the underreporting of crime? List several reasons why victims of violent crime might not report their abuse. How does this underreporting affect our overall understanding of crime rates and certain types of underreported crimes?
  8. What are some of the challenges and biases associated with measuring crime? How do issues such as underreporting, dark figures , and police discretion impact the accuracy of crime data? Provide several suggestions for remedying these shortcomings.
  9. What role do victimization surveys play in measuring crime? How do they capture different aspects of criminal behavior compared to official crime statistics?
  10. Explain the difference between the National Incident-Based Reporting System (NIBRS), the National Crime Victimization Survey (NCVS), and self-report surveys. How do these different approaches complement each other and contribute to our understanding of crime trends in different regions across America?
  11. How does self-report surveys contribute to our understanding of crime in the U.S.? What are some criticisms of this data collection method?

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