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Short-term forecasting of crime
Authors:Wilpen  Andreas  Yvonne  
Institution:a H. John Heinz III School of Public Policy and Management, Carnegie Mellon University, 4800 Forbes Avenue, Pittsburgh, PA 15213, USA;b TruNorth Data Systems, 292 Wallrose Heights Road, Baden, PA 15005, USA;c Office of the Emergency Services Commissioner, Department of Justice, 8/52 Collins Street, GPO Box 4356QQ, Melbourne, Victoria 3001, Australia
Abstract:The major question investigated is whether it is possible to accurately forecast selected crimes 1 month ahead in small areas, such as police precincts. In a case study of Pittsburgh, PA, we contrast the forecast accuracy of univariate time series models with naïve methods commonly used by police. A major result, expected for the small-scale data of this problem, is that average crime count by precinct is the major determinant of forecast accuracy. A fixed-effects regression model of absolute percent forecast error shows that such counts need to be on the order of 30 or more to achieve accuracy of 20% absolute forecast error or less. A second major result is that practically any model-based forecasting approach is vastly more accurate than current police practices. Holt exponential smoothing with monthly seasonality estimated using city-wide data is the most accurate forecast model for precinct-level crime series.
Keywords:Author Keywords: Crime forecasting  Time series  Small area estimation
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