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|a 10.3886/ICPSR29202.v1
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|a Hipp, John
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|a Crime in Boomburb Cities: 1970-2004 (United States)
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|a [Erscheinungsort nicht ermittelbar]
|b [Verlag nicht ermittelbar]
|c 2011
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|a This study focused on the effect of economic resources and racial/ethnic composition on the change in crime rates from 1970-2004 in United States cities in metropolitan areas that experienced a large growth in population after World War II. A total of 352 cities in the following United States metropolitan areas were selected for this study: Atlanta, Dallas, Denver, Houston, Las Vegas, Miami, Orange County, Orlando, Phoenix, Riverside, San Bernardino, San Diego, Silicon Valley (Santa Clara), and Tampa/St. Petersburg. Selection was based on the fact that these areas developed during a similar time period and followed comparable development trajectories. In particular, these 14 areas, known as the "boomburbs" for their dramatic, post-World War II population growth, all faced issues relating to the rapid growth of tract-style housing and the subsequent development of low density, urban sprawls. The study combined place-level data obtained from the United States Census with crime data from the Uniform Crime Reports for five categories of Type I crimes: aggravated assaults, robberies, murders, burglaries, and motor vehicle thefts. The dataset contains a total of 247 variables pertaining to crime, economic resources, and race/ethnic composition.
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|a ICPSR Terms of Use
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|a Aggravated assault
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|a Auto Theft
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|a Burglary
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|a crime patterns
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|a Crime rates
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|a Economic conditions
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|a Homicide
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|a Income Distribution
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|a metropolitan areas
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|a Race
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|a Racial Integration
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|a Racial segregation
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|a Robbery
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|a Trend Analysis
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|a Urban Crime
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|a Wealth
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|a Forschungsdaten
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