10 datasets found
  1. a

    Pittsburgh - Crime Rates

    • hub.arcgis.com
    Updated Jun 9, 2016
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    Civic Analytics Network (2016). Pittsburgh - Crime Rates [Dataset]. https://hub.arcgis.com/maps/civicanalytics::pittsburgh-crime-rates/about
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    Dataset updated
    Jun 9, 2016
    Dataset authored and provided by
    Civic Analytics Network
    Area covered
    Description

    This map shows a comparable measure of crime in the United States. The crime index compares the average local crime level to that of the United States as a whole. An index of 100 is average. A crime index of 120 indicates that crime in that area is 20 percent above the national average.The crime data is provided by Applied Geographic Solutions, Inc. (AGS). AGS created models using the FBI Uniform Crime Report databases as the primary data source and using an initial range of about 65 socio-economic characteristics taken from the 2000 Census and AGS’ current year estimates. The crimes included in the models include murder, rape, robbery, assault, burglary, theft, and motor vehicle theft. The total crime index incorporates all crimes and provides a useful measure of the relative “overall” crime rate in an area. However, these are unweighted indexes, meaning that a murder is weighted no more heavily than a purse snatching in the computations. The geography depicts states, counties, Census tracts and Census block groups. An urban/rural "mask" layer helps you identify crime patterns in rural and urban settings. The Census tracts and block groups help identify neighborhood-level variation in the crime data.------------------------The Civic Analytics Network collaborates on shared projects that advance the use of data visualization and predictive analytics in solving important urban problems related to economic opportunity, poverty reduction, and addressing the root causes of social problems of equity and opportunity. For more information see About the Civil Analytics Network.

  2. d

    Data from: Development of Crime Forecasting and Mapping Systems for Use by...

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Mar 12, 2025
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    National Institute of Justice (2025). Development of Crime Forecasting and Mapping Systems for Use by Police in Pittsburgh, Pennsylvania, and Rochester, New York, 1990-2001 [Dataset]. https://catalog.data.gov/dataset/development-of-crime-forecasting-and-mapping-systems-for-use-by-police-in-pittsburgh-1990--09e19
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    Dataset updated
    Mar 12, 2025
    Dataset provided by
    National Institute of Justice
    Area covered
    Pittsburgh, Pennsylvania, Rochester
    Description

    This study was designed to develop crime forecasting as an application area for police in support of tactical deployment of resources. Data on crime offense reports and computer aided dispatch (CAD) drug calls and shots fired calls were collected from the Pittsburgh, Pennsylvania Bureau of Police for the years 1990 through 2001. Data on crime offense reports were collected from the Rochester, New York Police Department from January 1991 through December 2001. The Rochester CAD drug calls and shots fired calls were collected from January 1993 through May 2001. A total of 1,643,828 records (769,293 crime offense and 874,535 CAD) were collected from Pittsburgh, while 538,893 records (530,050 crime offense and 8,843 CAD) were collected from Rochester. ArcView 3.3 and GDT Dynamap 2000 Street centerline maps were used to address match the data, with some of the Pittsburgh data being cleaned to fix obvious errors and increase address match percentages. A SAS program was used to eliminate duplicate CAD calls based on time and location of the calls. For the 1990 through 1999 Pittsburgh crime offense data, the address match rate was 91 percent. The match rate for the 2000 through 2001 Pittsburgh crime offense data was 72 percent. The Pittsburgh CAD data address match rate for 1990 through 1999 was 85 percent, while for 2000 through 2001 the match rate was 100 percent because the new CAD system supplied incident coordinates. The address match rates for the Rochester crime offenses data was 96 percent, and 95 percent for the CAD data. Spatial overlay in ArcView was used to add geographic area identifiers for each data point: precinct, car beat, car beat plus, and 1990 Census tract. The crimes included for both Pittsburgh and Rochester were aggravated assault, arson, burglary, criminal mischief, misconduct, family violence, gambling, larceny, liquor law violations, motor vehicle theft, murder/manslaughter, prostitution, public drunkenness, rape, robbery, simple assaults, trespassing, vandalism, weapons, CAD drugs, and CAD shots fired.

  3. g

    Pittsburgh Neighborhood Atlas, 1977

    • gimi9.com
    • data.wprdc.org
    • +3more
    Updated Dec 9, 2024
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    (2024). Pittsburgh Neighborhood Atlas, 1977 [Dataset]. https://gimi9.com/dataset/data-gov_pittsburgh-neighborhood-atlas-1977/
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    Dataset updated
    Dec 9, 2024
    Area covered
    Pittsburgh
    Description

    This compilation includes five historical datasets that are part of the University of Pittsburgh Library collection. The datasets were transcribed from The Pittsburgh Neighborhood Atlas, published in 1977. The atlas was prepared by the Pittsburgh Neighborhood Alliance. The information provides an insight into the neighborhoods conditions and the direction in which they were moving at the time of preparation. Much of the material describing neighborhood characteristics came from figures compiled for smaller areas: voting districts or census blocks. The five datasets in this collection provide data about overall neighborhood satisfaction and satisfaction with public services, based on a city-wide citizen survey. Also included are statistics about public assistance, the crime rate and the changes in real estate and mortgage loans transactions.

  4. C

    Pittsburgh Police Arrest Data

    • data.wprdc.org
    csv, xlsx
    Updated Apr 15, 2025
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    City of Pittsburgh (2025). Pittsburgh Police Arrest Data [Dataset]. https://data.wprdc.org/dataset/arrest-data
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    xlsx, csvAvailable download formats
    Dataset updated
    Apr 15, 2025
    Dataset provided by
    City of Pittsburgh
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    Pittsburgh
    Description

    This data ceased updating with the transition to a new records management system on 11/14/2023. Access to the updated data set has been added as of April 11, 2025 here: Crime Data Guide.

  5. d

    Data from: Examination of Crime Guns and Homicide in Pittsburgh,...

    • catalog.data.gov
    • datasets.ai
    • +1more
    Updated Mar 12, 2025
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    National Institute of Justice (2025). Examination of Crime Guns and Homicide in Pittsburgh, Pennsylvania, 1987-1998 [Dataset]. https://catalog.data.gov/dataset/examination-of-crime-guns-and-homicide-in-pittsburgh-pennsylvania-1987-1998-b3a75
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    Dataset updated
    Mar 12, 2025
    Dataset provided by
    National Institute of Justice
    Area covered
    Pittsburgh, Pennsylvania
    Description

    This study examined spatial and temporal features of crime guns in Pittsburgh, Pennsylvania, in order to ascertain how gun availability affected criminal behavior among youth, whether the effects differed between young adults and juveniles, and whether that relationship changed over time. Rather than investigating the general prevalence of guns, this study focused only on those firearms used in the commission of crimes. Crime guns were defined specifically as those used in murders, assaults, robberies, weapons offenses, and drug offenses. The emphasis of the project was on the attributes of crime guns and those who possess them, the geographic sources of those guns, the distribution of crime guns over neighborhoods in a city, and the relationship between the prevalence of crime guns and the incidence of homicide. Data for Part 1, Traced Guns Data, came from the City of Pittsburgh Bureau of Police. Gun trace data provided a detailed view of crime guns recovered by police during a two-year period, from 1995 to 1997. These data identified the original source of each crime gun (first sale to a non-FFL, i.e., a person not holding a Federal Firearms License) as well as attributes of the gun and the person possessing the gun at the time of the precipitating crime, and the ZIP-code location where the gun was recovered. For Part 2, Crime Laboratory Data, data were gathered from the local county crime laboratory on guns submitted by Pittsburgh police for forensic testing. These data were from 1993 to 1998 and provided a longer time series for examining changes in crime guns over time than the data in Part 1. In Parts 3 and 4, Stolen Guns by ZIP-Code Data and Stolen Guns by Census Tract Data, data on stolen guns came from the local police. These data included the attributes of the guns and residential neighborhoods of owners. Part 3 contains data from 1987 to 1996 organized by ZIP code, whereas Part 4 contains data from 1993 to 1996 organized by census tract. Part 5, Shots Fired Data, contains the final indicator of crime gun prevalence for this study, which was 911 calls of incidents involving shots fired. These data provided vital information on both the geographic location and timing of these incidents. Shots-fired incidents not only captured varying levels of access to crime guns, but also variations in the willingness to actually use crime guns in a criminal manner. Part 6, Homicide Data, contains homicide data for the city of Pittsburgh from 1990 to 1995. These data were used to examine the relationship between varying levels of crime gun prevalence and levels of homicide, especially youth homicide, in the same city. Part 7, Pilot Mapping Application, is a pilot application illustrating the potential uses of mapping tools in police investigations of crime guns traced back to original point of sale. NTC. It consists of two ArcView 3.1 project files and 90 supporting data and mapping files. Variables in Part 1 include date of manufacture and sale of the crime gun, weapon type, gun model, caliber, firing mechanism, dealer location (ZIP code and state), recovery date and location (ZIP code and state), age and state of residence of purchaser and possessor, and possessor role. Part 2 also contains gun type and model, as well as gun make, precipitating offense, police zone submitting the gun, and year the gun was submitted to the crime lab. Variables in Parts 3 and 4 include month and year the gun was stolen, gun type, make, and caliber, and owner residence. Residence locations are limited to owner ZIP code in Part 3, and 1990 Census tract number and neighborhood name in Part 4. Part 5 contains the date, time, census tract and police zone of 911 calls relating to shots fired. Part 6 contains the date and census tract of the homicide incident, drug involvement, gang involvement, weapon, and victim and offender ages. Data in Part 7 include state, county, and ZIP code of traced guns, population figures, and counts of crime guns recovered at various geographic locations (states, counties, and ZIP codes) where the traced guns first originated in sales by an FFL to a non-FFL individual. Data for individual guns are not provided in Part 7.

  6. d

    Police Incident Blotter (30 Day)

    • catalog.data.gov
    Updated May 14, 2023
    + more versions
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    City of Pittsburgh (2023). Police Incident Blotter (30 Day) [Dataset]. https://catalog.data.gov/dataset/police-incident-blotter-30-day
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    Dataset updated
    May 14, 2023
    Dataset provided by
    City of Pittsburgh
    Description

    The 30-Day Police Blotter contains the most recent initial crime incident data, updated on a nightly basis. All data is reported at the block/intersection level, with the exception of sex crimes, which are reported at the police zone level. The information is "semi-refined" meaning a police report was taken, but it has not made its way through the court system. This data is subject to change once it is processed and republished using Uniform Crime Reporting (UCR) standards. The UCR coding process creates a necessary delay before processed data is available for publication. Therefore, the 30-Day blotter will provide information for users seeking the most current information available. This dataset will be continually overwritten and any records older than thirty days will be removed. Validated incidents will be moved to the Police Blotter Archive dataset. Data in the archived file is of a higher quality and is the file most appropriate for reporting crime statistics. This dataset only contains information reported by City of Pittsburgh Police, and does not contain incidents that solely involve other police departments operating within the city (campus police, Port Authority, etc.) More documentation is available in our Crime Data Guide.

  7. C

    Police Incident Blotter (Archive)

    • data.wprdc.org
    • gimi9.com
    • +1more
    csv, xlsx
    Updated Apr 11, 2025
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    City of Pittsburgh (2025). Police Incident Blotter (Archive) [Dataset]. https://data.wprdc.org/dataset/uniform-crime-reporting-data
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    csv, xlsxAvailable download formats
    Dataset updated
    Apr 11, 2025
    Dataset provided by
    City of Pittsburgh
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    This data ceased updating with the transition to a new records management system on 11/14/2023. Access to the updated data set has been added as of April 11, 2025 here: https://data.wprdc.org/dataset/monthly-criminal-activity-dashboard.

    The Police Blotter Archive contains crime incident data after it has been validated and processed to meet Uniform Crime Reporting (UCR) standards, published on a nightly basis. This data validation process creates a data publishing delay of approximately thirty days. Users who require the most recent incident data should use the 30 Day Police Blotter. The 30 Day Police Blotter dataset contains more recent data, but has not yet been run through quality control and standardization procedures by the Police Bureau. All data is reported at the block/intersection level, with the exception of sex crimes, which are reported at the police zone level.

    This dataset only contains information reported by City of Pittsburgh Police, and does not contain incidents that solely involve other police departments operating within the city (campus police, Port Authority, etc.)

    More documentation is available in our Crime Data Guide.

  8. Data from: Evaluation of the Weed and Seed Initiative in the United States,...

    • catalog.data.gov
    • icpsr.umich.edu
    Updated Mar 12, 2025
    + more versions
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    National Institute of Justice (2025). Evaluation of the Weed and Seed Initiative in the United States, 1994 [Dataset]. https://catalog.data.gov/dataset/evaluation-of-the-weed-and-seed-initiative-in-the-united-states-1994-73f69
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    Dataset updated
    Mar 12, 2025
    Dataset provided by
    National Institute of Justicehttp://nij.ojp.gov/
    Area covered
    United States
    Description

    The Department of Justice launched Operation Weed and Seed in 1991 as a means of mobilizing a large and varied array of resources in a comprehensive, coordinated effort to control crime and drug problems and improve the quality of life in targeted high-crime neighborhoods. In the long term, Weed and Seed programs are intended to reduce levels of crime, violence, drug trafficking, and fear of crime, and to create new jobs, improve housing, enhance the quality of neighborhood life, and reduce alcohol and drug use. This baseline data collection effort is the initial step toward assessing the achievement of the long-term objectives. The evaluation was conducted using a quasi-experimental design, matching households in comparison neighborhoods with the Weed and Seed target neighborhoods. Comparison neighborhoods were chosen to match Weed and Seed target neighborhoods on the basis of crime rates, population demographics, housing characteristics, and size and density. Neighborhoods in eight sites were selected: Akron, OH, Bradenton (North Manatee), FL, Hartford, CT, Las Vegas, NV, Pittsburgh, PA, Salt Lake City, UT, Seattle, WA, and Shreveport, LA. The "neighborhood" in Hartford, CT, was actually a public housing development, which is part of the reason for the smaller number of interviews at this site. Baseline data collection tasks included the completion of in-person surveys with residents in the target and matched comparison neighborhoods, and the provision of guidance to the sites in the collection of important process data on a routine uniform basis. The survey questions can be broadly divided into these areas: (1) respondent demographics, (2) household size and income, (3) perceptions of the neighborhood, and (4) perceptions of city services. Questions addressed in the course of gathering the baseline data include: Are the target and comparison areas sufficiently well-matched that analytic contrasts between the areas over time are valid? Is there evidence that the survey measures are accurate and valid measures of the dependent variables of interest -- fear of crime, victimization, etc.? Are the sample sizes and response rates sufficient to provide ample statistical power for later analyses? Variables cover respondents' perceptions of the neighborhood, safety and observed security measures, police effectiveness, and city services, as well as their ratings of neighborhood crime, disorder, and other problems. Other items included respondents' experiences with victimization, calls/contacts with police and satisfaction with police response, and involvement in community meetings and events. Demographic information on respondents includes year of birth, gender, ethnicity, household income, and employment status.

  9. J

    Likelihood-Based Inference and Prediction in Spatio-Temporal Panel Count...

    • journaldata.zbw.eu
    • jda-test.zbw.eu
    .mat +2
    Updated Dec 7, 2022
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    Roman Liesenfeld; Jean-François Richard; Jan Vogler; Roman Liesenfeld; Jean-François Richard; Jan Vogler (2022). Likelihood-Based Inference and Prediction in Spatio-Temporal Panel Count Models for Urban Crimes (replication data) [Dataset]. http://doi.org/10.15456/jae.2022326.0702168168
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    txt(161460), txt(57684), .mat(33488), application/vnd.wolfram.mathematica.package(6980), txt(2603), txt(502624)Available download formats
    Dataset updated
    Dec 7, 2022
    Dataset provided by
    ZBW - Leibniz Informationszentrum Wirtschaft
    Authors
    Roman Liesenfeld; Jean-François Richard; Jan Vogler; Roman Liesenfeld; Jean-François Richard; Jan Vogler
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    We develop a panel count model with a latent spatio-temporal heterogeneous state process for monthly severe crimes at the census-tract level in Pittsburgh, Pennsylvania. Our dataset combines Uniform Crime Reporting data with socio-economic data. The likelihood is estimated by efficient importance sampling techniques for high-dimensional spatial models. Estimation results confirm the broken-windows hypothesis whereby less severe crimes are leading indicators for severe crimes. In addition to ML parameter estimates, we compute several other statistics of interest for law enforcement such as spatio-temporal elasticities of severe crimes with respect to less severe crimes, out-of-sample forecasts, predictive distributions and validation test statistics.

  10. d

    Police Incident Blotter (Archive).

    • datadiscoverystudio.org
    • data.amerigeoss.org
    • +1more
    csv, xlsx
    Updated Jun 6, 2018
    + more versions
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    (2018). Police Incident Blotter (Archive). [Dataset]. http://datadiscoverystudio.org/geoportal/rest/metadata/item/ed2af102a7d34408b4ac9f588152317c/html
    Explore at:
    xlsx, csvAvailable download formats
    Dataset updated
    Jun 6, 2018
    Description

    description: The Police Blotter Archive contains crime incident data after it has been validated and processed to meet Uniform Crime Reporting (UCR) standards, published on a nightly basis. This data validation process creates a data publishing delay of approximately thirty days. Users who require the most recent incident data should use the 30 Day Police Blotter. The 30 Day Police Blotter dataset contains more recent data, but has not yet been run through quality control and standardization procedures by the Police Bureau. All data is reported at the block/intersection level, with the exception of sex crimes, which are reported at the police zone level. This dataset only contains information reported by City of Pittsburgh Police, and does not contain incidents that solely involve other police departments operating within the city (campus police, Port Authority, etc.) Crime Data Guide; abstract: The Police Blotter Archive contains crime incident data after it has been validated and processed to meet Uniform Crime Reporting (UCR) standards, published on a nightly basis. This data validation process creates a data publishing delay of approximately thirty days. Users who require the most recent incident data should use the 30 Day Police Blotter. The 30 Day Police Blotter dataset contains more recent data, but has not yet been run through quality control and standardization procedures by the Police Bureau. All data is reported at the block/intersection level, with the exception of sex crimes, which are reported at the police zone level. This dataset only contains information reported by City of Pittsburgh Police, and does not contain incidents that solely involve other police departments operating within the city (campus police, Port Authority, etc.) Crime Data Guide

  11. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

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Civic Analytics Network (2016). Pittsburgh - Crime Rates [Dataset]. https://hub.arcgis.com/maps/civicanalytics::pittsburgh-crime-rates/about

Pittsburgh - Crime Rates

Explore at:
2 scholarly articles cite this dataset (View in Google Scholar)
Dataset updated
Jun 9, 2016
Dataset authored and provided by
Civic Analytics Network
Area covered
Description

This map shows a comparable measure of crime in the United States. The crime index compares the average local crime level to that of the United States as a whole. An index of 100 is average. A crime index of 120 indicates that crime in that area is 20 percent above the national average.The crime data is provided by Applied Geographic Solutions, Inc. (AGS). AGS created models using the FBI Uniform Crime Report databases as the primary data source and using an initial range of about 65 socio-economic characteristics taken from the 2000 Census and AGS’ current year estimates. The crimes included in the models include murder, rape, robbery, assault, burglary, theft, and motor vehicle theft. The total crime index incorporates all crimes and provides a useful measure of the relative “overall” crime rate in an area. However, these are unweighted indexes, meaning that a murder is weighted no more heavily than a purse snatching in the computations. The geography depicts states, counties, Census tracts and Census block groups. An urban/rural "mask" layer helps you identify crime patterns in rural and urban settings. The Census tracts and block groups help identify neighborhood-level variation in the crime data.------------------------The Civic Analytics Network collaborates on shared projects that advance the use of data visualization and predictive analytics in solving important urban problems related to economic opportunity, poverty reduction, and addressing the root causes of social problems of equity and opportunity. For more information see About the Civil Analytics Network.

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