Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The Global Organized Crime Index is a multi-dimensional tool created by the Global Initiative Against Transnational Organized Crime (GI-TOC). It assesses the levels of criminality and resilience to organized crime for 193 countries, focusing on three key pillars:
The dataset is underpinned by extensive quantitative and qualitative research, drawing from over 400 expert assessments and evaluations conducted by GI-TOC’s regional observatories. This dataset covers the years 2022 & 2023, offering insights for policymakers, researchers, and stakeholders to understand and address organized crime globally.
Facebook
TwitterThe Division of Criminal Justice Services (DCJS) collects crime reports from more than 500 New York State police and sheriffs' departments. DCJS compiles these reports as New York's official crime statistics and submits them to the FBI under the National Uniform Crime Reporting (UCR) Program. UCR uses standard offense definitions to count crime in localities across America regardless of variations in crime laws from state to state. In New York State, law enforcement agencies use the UCR system to report their monthly crime totals to DCJS. The UCR reporting system collects information on seven crimes classified as Index offenses which are most commonly used to gauge overall crime volume. These include the violent crimes of murder/non-negligent manslaughter, forcible rape, robbery, and aggravated assault; and the property crimes of burglary, larceny, and motor vehicle theft. Police agencies may experience reporting problems that preclude accurate or complete reporting. The counts represent only crimes reported to the police but not total crimes that occurred. DCJS posts preliminary data in the spring and final data in the fall.
Facebook
TwitterCrime severity index (violent, non-violent, youth) and weighted clearance rates (violent, non-violent), Canada, provinces, territories and Census Metropolitan Areas, 1998 to 2024.
Facebook
TwitterCrime data assembled by census block group for the MSA from the Applied Geographic Solutions' (AGS) 1999 and 2005 'CrimeRisk' databases distributed by the Tetrad Computer Applications Inc. CrimeRisk is the result of an extensive analysis of FBI crime statistics. Based on detailed modeling of the relationships between crime and demographics, CrimeRisk provides an accurate view of the relative risk of specific crime types at the block group level. Data from 1990 - 1996,1999, and 2004-2005 were used to compute the attributes, please refer to the 'Supplemental Information' section of the metadata for more details. Attributes are available for two categories of crimes, personal crimes and property crimes, along with total and personal crime indices. Attributes for personal crimes include murder, rape, robbery, and assault. Attributes for property crimes include burglary, larceny, and mother vehicle theft. 12 block groups have no attribute information. CrimeRisk is a block group and higher level geographic database consisting of a series of standardized indexes for a range of serious crimes against both persons and property. It is derived from an extensive analysis of several years of crime reports from the vast majority of law enforcement jurisdictions nationwide. The crimes included in the database are the "Part I" crimes and include murder, rape, robbery, assault, burglary, theft, and motor vehicle theft. These categories are the primary reporting categories used by the FBI in its Uniform Crime Report (UCR), with the exception of Arson, for which data is very inconsistently reported at the jurisdictional level. Part II crimes are not reported in the detail databases and are generally available only for selected areas or at high levels of geography. In accordance with the reporting procedures using in the UCR reports, aggregate indexes have been prepared for personal and property crimes separately, as well as a total index. While this provides a useful measure of the relative "overall" crime rate in an area, it must be recognized that these are unweighted indexes, in that a murder is weighted no more heavily than a purse snatching in the computation. For this reason, caution is advised when using any of the aggregate index values. The block group boundaries used in the dataset come from TeleAtlas's (formerly GDT) Dynamap data, and are consistent with all other block group boundaries in the BES geodatabase. This is part of a collection of 221 Baltimore Ecosystem Study metadata records that point to a geodatabase. The geodatabase is available online and is considerably large. Upon request, and under certain arrangements, it can be shipped on media, such as a usb hard drive. The geodatabase is roughly 51.4 Gb in size, consisting of 4,914 files in 160 folders. Although this metadata record and the others like it are not rich with attributes, it is nonetheless made available because the data that it represents could be indeed useful. This is part of a collection of 221 Baltimore Ecosystem Study metadata records that point to a geodatabase. The geodatabase is available online and is considerably large. Upon request, and under certain arrangements, it can be shipped on media, such as a usb hard drive. The geodatabase is roughly 51.4 Gb in size, consisting of 4,914 files in 160 folders. Although this metadata record and the others like it are not rich with attributes, it is nonetheless made available because the data that it represents could be indeed useful.
Facebook
TwitterThe dataset contains a subset of locations and attributes of incidents reported in the ASAP (Analytical Services Application) crime report database by the District of Columbia Metropolitan Police Department (MPD). Visit crimecards.dc.gov for more information. This data is shared via an automated process where addresses are geocoded to the District's Master Address Repository and assigned to the appropriate street block. Block locations for some crime points could not be automatically assigned resulting in 0,0 for x,y coordinates. These can be interactively assigned using the MAR Geocoder.On February 1 2020, the methodology of geography assignments of crime data was modified to increase accuracy. From January 1 2020 going forward, all crime data will have Ward, ANC, SMD, BID, Neighborhood Cluster, Voting Precinct, Block Group and Census Tract values calculated prior to, rather than after, anonymization to the block level. This change impacts approximately one percent of Ward assignments.
Facebook
TwitterThe data tables below contain estimates from the British Crime Survey (BCS) broken down by a number of demographic characteristics. They can be used to calculate the rates and numbers of different crime types, as well as levels of certain perception measures also covered by the BCS.
A full list of the measurements that can be found in the tables can be found in the MeasurementVar reference table. A list of the demographic characteristics by which these measurements can be analysed can be found in the CharacteristicVar reference table. Both reference tables can be downloaded below.
It is recommended that users consult the User Guide to Home Office Crime Statistics in conjunction with these tables for background information on the context and limitations of BCS data.
Facebook
TwitterImportant information: detailed data on crimes recorded by the police from April 2002 onwards are published in the police recorded crime open data tables. As such, from July 2016 data on crimes recorded by the police from April 2002 onwards are no longer published on this webpage. This is because the data is available in the police recorded crime open data tables which provide a more detailed breakdown of crime figures by police force area, offence code and financial year quarter. Data for Community Safety Partnerships are also available.
The open data tables are updated every three months to incorporate any changes such as reclassifications or crimes being cancelled or transferred to another police force, which means that they are more up-to-date than the tables published on this webpage which are updated once per year. Additionally, the open data tables are in a format designed to be user-friendly and enable analysis.
If you have any concerns about the way these data are presented please contact us by emailing CrimeandPoliceStats@homeoffice.gov.uk. Alternatively, please write to
Home Office Crime and Policing Analysis
1st Floor, Peel Building
2 Marsham Street
London
SW1P 4DF
Facebook
TwitterThe files in this dataset are for Edmonton Neighbourhood Crime Stats and Population Figures. These files were merged and used to calculate crime rates for the various types of incidents.
Both files were downloaded from the City of Edmonton Open Data Portal and estimated population figures were obtained from various independent sources for the missing years.
To analyze crime/policy data from the City of Edmonton to identify initiatives that have had success in reducing various crime rates. To also look at the culture/society of Edmonton to analyze if that contributes to increased/decreased crime rates.
Facebook
Twitterhttps://crystalroof.co.uk/api-terms-of-usehttps://crystalroof.co.uk/api-terms-of-use
This method returns total crime rates, crime rates by crime types, area ratings by total crime, and area ratings by crime type for small areas (Lower Layer Super Output Areas, or LSOAs) and Local Authority Districts (LADs). The results are determined by the inclusion of the submitted postcode/coordinates/UPRN within the corresponding LSOA or LAD.
All figures are annual (for the last 12 months).
The crime rates are calculated per 1,000 resident population derived from the census 2021.
The dataset is updated on a monthly basis, with a 3-month lag between the current date and the most recent data.
Facebook
Twitterhttps://crystalroof.co.uk/api-terms-of-usehttps://crystalroof.co.uk/api-terms-of-use
This method returns Crystal Roof’s proprietary crime rate map overlays. These overlays are taken directly from our main Crime Rates map.
The overlays are circular PNG images, available in 1,000, 1,500, or 2,000-meter radii.
You can request overlays showing either total crime rates or crime rates for a specific crime type (controlled by the variant parameter).
Facebook
TwitterOpen Government Licence 3.0http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
License information was derived automatically
Police recorded crime figures by Police Force Area and Community Safety Partnership areas (which equate in the majority of instances, to local authorities).
Facebook
TwitterToronto Neighbourhoods Boundary File includes Crime Data by Neighbourhood. Counts are available at the offence and/or victim level for Assault, Auto Theft, Bike Theft, Break and Enter, Robbery, Theft Over, Homicide, Shootings and Theft from Motor Vehicle. Data also includes crime rates per 100,000 people by neighbourhood based on each year's Projected Population by Environics Analytics.This data does not include occurrences that have been deemed unfounded. The definition of unfounded according to Statistics Canada is: “It has been determined through police investigation that the offence reported did not occur, nor was it attempted” (Statistics Canada, 2020).**The dataset is intended to provide communities with information regarding public safety and awareness. The data supplied to the Toronto Police Service by the reporting parties is preliminary and may not have been fully verified at the time of publishing the dataset. The location of crime occurrences have been deliberately offset to the nearest road intersection node to protect the privacy of parties involved in the occurrence. All location data must be considered as an approximate location of the occurrence and users are advised not to interpret any of these locations as related to a specific address or individual.NOTE: Due to the offset of occurrence location, the numbers by Division and Neighbourhood may not reflect the exact count of occurrences reported within these geographies. Therefore, the Toronto Police Service does not guarantee the accuracy, completeness, timeliness of the data and it should not be compared to any other source of crime data.By accessing these datasets, the user agrees to full acknowledgement of the Open Government Licence - Ontario..In accordance with the Municipal Freedom of Information and Protection of Privacy Act, the Toronto Police Service has taken the necessary measures to protect the privacy of individuals involved in the reported occurrences. No personal information related to any of the parties involved in the occurrence will be released as open data. ** Statistics Canada. 2020. Uniform Crime Reporting Manual. Surveys and Statistical Programs. Canadian Centre for Justice Statistics.
Facebook
TwitterAttribution-NonCommercial-ShareAlike 4.0 (CC BY-NC-SA 4.0)https://creativecommons.org/licenses/by-nc-sa/4.0/
License information was derived automatically
Introduction: The dataset used for this experiment is real and authentic. The dataset is acquired from UCI machine learning repository website [13]. The title of the dataset is ‘Crime and Communities’. It is prepared using real data from socio-economic data from 1990 US Census, law enforcement data from the 1990 US LEMAS survey, and crimedata from the 1995 FBI UCR [13]. This dataset contains a total number of 147 attributes and 2216 instances.
The per capita crimes variables were calculated using population values included in the 1995 FBI data (which differ from the 1990 Census values).
The variables included in the dataset involve the community, such as the percent of the population considered urban, and the median family income, and involving law enforcement, such as per capita number of police officers, and percent of officers assigned to drug units. The crime attributes (N=18) that could be predicted are the 8 crimes considered 'Index Crimes' by the FBI)(Murders, Rape, Robbery, .... ), per capita (actually per 100,000 population) versions of each, and Per Capita Violent Crimes and Per Capita Nonviolent Crimes)
predictive variables : 125 non-predictive variables : 4 potential goal/response variables : 18
http://archive.ics.uci.edu/ml/datasets/Communities%20and%20Crime%20Unnormalized
U. S. Department of Commerce, Bureau of the Census, Census Of Population And Housing 1990 United States: Summary Tape File 1a & 3a (Computer Files),
U.S. Department Of Commerce, Bureau Of The Census Producer, Washington, DC and Inter-university Consortium for Political and Social Research Ann Arbor, Michigan. (1992)
U.S. Department of Justice, Bureau of Justice Statistics, Law Enforcement Management And Administrative Statistics (Computer File) U.S. Department Of Commerce, Bureau Of The Census Producer, Washington, DC and Inter-university Consortium for Political and Social Research Ann Arbor, Michigan. (1992)
U.S. Department of Justice, Federal Bureau of Investigation, Crime in the United States (Computer File) (1995)
Your data will be in front of the world's largest data science community. What questions do you want to see answered?
Data available in the dataset may not act as a complete source of information for identifying factors that contribute to more violent and non-violent crimes as many relevant factors may still be missing.
However, I would like to try and answer the following questions answered.
Analyze if number of vacant and occupied houses and the period of time the houses were vacant had contributed to any significant change in violent and non-violent crime rates in communities
How has unemployment changed crime rate(violent and non-violent) in the communities?
Were people from a particular age group more vulnerable to crime?
Does ethnicity play a role in crime rate?
Has education played a role in bringing down the crime rate?
Facebook
TwitterTags
Social System, Social Institutions, Justice, Crime, BES, Murder, Rape, Robbery, Assault, Burglary, Larceny, Motor Vehicle Theft
Summary
Analysis of crime data for the Baltimore MSA.
Description
Crime data assembled by census block group for the MSA from the Applied Geographic Solutions' (AGS) 1999 and 2005 'CrimeRisk' databases distributed by the Tetrad Computer Applications Inc. CrimeRisk is the result of an extensive analysis of FBI crime statistics. Based on detailed modeling of the relationships between crime and demographics, CrimeRisk provides an accurate view of the relative risk of specific crime types at the block group level.
Data from 1990 - 1996,1999, and 2004-2005 were used to compute the attributes, please refer to the 'Supplemental Information' section of the metadata for more details. Attributes are available for two categories of crimes, personal crimes and property crimes, along with total and personal crime indices. Attributes for personal crimes include murder, rape, robbery, and assault. Attributes for property crimes include burglary, larceny, and mother vehicle theft. 12 block groups have no attribute information.
CrimeRisk is a block group and higher level geographic database consisting of a series of standardized indexes for a range of serious crimes against both persons and property. It is derived from an extensive analysis of several years of crime reports from the vast majority of law enforcement jurisdictions nationwide. The crimes included in the database are the "Part I" crimes and include murder, rape, robbery, assault, burglary, theft, and motor vehicle theft. These categories are the primary reporting categories used by the FBI in its Uniform Crime Report (UCR), with the exception of Arson, for which data is very inconsistently reported at the jurisdictional level. Part II crimes are not reported in the detail databases and are generally available only for selected areas or at high levels of geography.
In accordance with the reporting procedures using in the UCR reports, aggregate indexes have been prepared for personal and property crimes separately, as well as a total index. While this provides a useful measure of the relative "overall" crime rate in an area, it must be recognized that these are unweighted indexes, in that a murder is weighted no more heavily than a purse snatching in the computation. For this reason, caution is advised when using any of the aggregate index values.
The block group boundaries used in the dataset come from TeleAtlas's (formerly GDT) Dynamap data, and are consistent with all other block group boundaries in the BES geodatabase.
Credits
UVM Spatial Analysis Lab
Use limitations
BES use only
Extent
West -77.314305 East -76.049572
North 39.736284 South 38.700454
Facebook
TwitterU.S. Government Workshttps://www.usa.gov/government-works
License information was derived automatically
Dataset showing reported crime by county by general offense type. Crime rates are calculated using Census population estimates.
Splitgraph serves as an HTTP API that lets you run SQL queries directly on this data to power Web applications. For example:
See the Splitgraph documentation for more information.
Facebook
Twitterhttps://creativecommons.org/publicdomain/zero/1.0/https://creativecommons.org/publicdomain/zero/1.0/
This dataset looks at the number of movies produced in the United States of America that fall into the "crime" genre between 1985 and 2017 and compares it to violent crime rates of the same time. The time frame was chosen based off of accessible data (The Movies Dataset ends with 2017 and the FBI's CDE tool starts at 1985).
The data for the movies and genres was pulled from "The Movies Dataset" on Kaggle where columns were adjusted and the first two genres were kept. The data was then filtered to only include films released in the United States of America from 1985-2017. Violent crime data and population data in the USA was then joined.
movies-to-crime_data_by_population_1985-2017_2023-03-06.csv: This file contains the filtered and sorted data joining together the rest of the included data.
movies_data_cleaned_V2.csv: This includes a large movie dataset that was pulled from the aforementioned "The Movies Dataset" and adjusted for usability for this project, find original dataset here.
population_data_1985-2017.csv: This data was pulled from the World Bank, Population, Total for United States [POPTOTUSA647NWDB], retrieved from FRED, Federal Reserve Bank of St. Louis.
violent_crime_rates_USA_1985-2017_2024-03-06.csv: This data was pulled from the Federal Bureau of Investigation's "Crime Data Explorer" tool. Data pulled includes all violent crime 1985-2017. More information concerning how violent crimes are categorized can be found on the Crime Data Explorer's website linked above.
All data was sourced via publicly available datasets and linked to above. Special thanks to Kaggle user Rounak Banik for their work creating "The Movies Dataset" which was incredibly helpful.
This project was a side project to gain further practice with tools such as SQL, R, Tableau and spreadsheets. It began with a focus on authors of crime novels vs amount of actual criminals. The project soon morphed into this after a struggle to find usable datasets.
Facebook
TwitterOpen Government Licence - Canada 2.0https://open.canada.ca/en/open-government-licence-canada
License information was derived automatically
The data contains the number of criminal incidents, the clearance status of those incidents and persons-charged, by MCYS region (Central, East, North, Toronto, West, Other). The survey was designed to measure the incidence of crime in our society and its characteristics. The Canadian Centre for Justice Statistics, in co-operation with the policing community, collects police-reported crime statistics through the UCR survey. Adapted from Statistics Canada, CANSIM Table 252-0077, 2015. This does not constitute an endorsement by Statistics Canada of this product. *[MCYS]: Ministry of Children and Youth Services *[ CANSIM]: Canadian Socio-Economic Information Management System *[UCR]: Uniform Crime Reporting
Facebook
TwitterThe Uniform Crime Reporting (UCR) Program has been the starting place for law enforcement executives, students of criminal justice, researchers, members of the media, and the public at large seeking information on crime in the nation. Part I categorizes incidents in two categories: violent and property crimes. Aggravated assault, forcible rape, murder, and robbery are classified as violent crime, while burglary, larceny-theft, and motor vehicle theft are classified as property crimes. This dataset contains FBI Uniform Crime Reporting (UCR) Part I crime data for the last 40 years in Greensboro, North Carolina. The crime rate or index is calculated on a per 100,000 resident basis.A crime rate describes the number of crimes reported to law enforcement agencies per 100,000 residents. A crime rate is calculated by dividing the number of reported crimes by the total population; the result is multiplied by 100,000. For example, in 2013 there were 496 robberies in Greensboro and the population was 268,176 according to the SBI estimate. This equals a robbery crime rate of 185 per 100,000 general population.496/268,176 = 0.00184953165085615 x 100,000 = 184.95The Greensboro Police Department is comprised of 787 sworn and non-sworn employees dedicated to the mission of partnering to fight crime for a safer Greensboro. We believe that effectively fighting crime requires everyone's effort. With your assistance, we can make our city safer. Wondering what you can do?Take reasonable steps to prevent being victimized. Lock your car and home doors. Be aware of your surroundings. If something or someonefeels out of the ordinary, go to a safe place.Be additional eyes and ears for us. Report suspicious or unusual activity, and provide tips through Crime Stoppers that can help solve crime.Look out for your neighbors. Strong communities with active Neighborhood Watch programs are not attractive to criminals. By taking care of the people around you, you can create safe places to live and work.Get involved! If you have children, teach them how to react to bullying, what the dangers of texting and driving are, and how to safely use the Internet. Talk with your older relatives about scams that target senior citizens.Learn more about GPD. Ride along with us. Participate in the Police Citizens' Academy. Volunteer, apply for an internship, or better yet join us.You may have heard about our philosophy of neighborhood-oriented policing. This is practice in policing that combines data-driven crime analysis with police/citizen partnerships to solve problems.In the spirit of partnership with the community, our goal is to make the Greensboro Police Department as accessible as possible to the people we serve. Policies and procedures, referred to as directives, are rules that all Greensboro Police Department employees must follow in carrying out the mission of the department. We will update the public copy of the directives in a timely manner to remain consistent with new policy and procedure updates.
Facebook
TwitterThe dataset contains a subset of locations and attributes of incidents reported in the ASAP (Analytical Services Application) crime report database by the District of Columbia Metropolitan Police Department (MPD). Visit https://crimecards.dc.gov for more information. This data is shared via an automated process where addresses are geocoded to the District's Master Address Repository and assigned to the appropriate street block. Block locations for some crime points could not be automatically assigned resulting in 0,0 for x,y coordinates. These can be interactively assigned using the MAR Geocoder.On February 1 2020, the methodology of geography assignments of crime data was modified to increase accuracy. From January 1 2020 going forward, all crime data will have Ward, ANC, SMD, BID, Neighborhood Cluster, Voting Precinct, Block Group and Census Tract values calculated prior to, rather than after, anonymization to the block level. This change impacts approximately one percent of Ward assignments.
Facebook
TwitterThe purpose of this data collection was to determine the seriousness of criminal events. The principal investigators sought to determine and rate the relative seriousness of murder, rape, and petty theft. Information in the collection includes respondents' opinions on the severity of particular crimes as well as how that severity compared to other crimes.
Facebook
TwitterAttribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
License information was derived automatically
The Global Organized Crime Index is a multi-dimensional tool created by the Global Initiative Against Transnational Organized Crime (GI-TOC). It assesses the levels of criminality and resilience to organized crime for 193 countries, focusing on three key pillars:
The dataset is underpinned by extensive quantitative and qualitative research, drawing from over 400 expert assessments and evaluations conducted by GI-TOC’s regional observatories. This dataset covers the years 2022 & 2023, offering insights for policymakers, researchers, and stakeholders to understand and address organized crime globally.