Volume 178, Issue 2
Original Article

Partially supervised spatiotemporal clustering for burglary crime series identification

Brian J. Reich

Corresponding Author

North Carolina State University, Raleigh, USA

Address for correspondence: Brian J. Reich, Department of Statistics, North Carolina State University, 4264 SAS Hall, Box 8302, Raleigh, NC 27695, USA. E‐mail: bjreich@ncsu.eduSearch for more papers by this author
Michael D. Porter

University of Alabama, Tuscaloosa, USA

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First published: 03 September 2014
Citations: 13

Summary

Statistical clustering of criminal events can be used by crime analysts to create lists of potential suspects for an unsolved crime, to identify groups of crimes that may have been committed by the same individuals or group of individuals, for offender profiling and for predicting future events. We propose a Bayesian model‐based clustering approach for criminal events. Our approach is semisupervised, because the offender is known for a subset of the events, and utilizes spatiotemporal crime locations as well as crime features describing the offender's modus operandi. The hierarchical model naturally handles complex features that are often seen in crime data, including missing data, interval‐censored event times and a mix of discrete and continuous variables. In addition, our Bayesian model produces posterior clustering probabilities which allow analysts to act on model output only as warranted. We illustrate the approach by using a large data set of burglaries in 2009–2010 in Baltimore County, Maryland.

Number of times cited according to CrossRef: 13

  • Mapping the Risk Terrain for Crime Using Machine Learning, Journal of Quantitative Criminology, 10.1007/s10940-020-09457-7, (2020).
  • Permutation-test-based clustering method for detection of dynamic patterns in Spatio-temporal datasets, Computers, Environment and Urban Systems, 10.1016/j.compenvurbsys.2019.02.007, 75, (204-216), (2019).
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  • undefined, 2016 European Intelligence and Security Informatics Conference (EISIC), 10.1109/EISIC.2016.024, (92-95), (2016).
  • Clustering Residential Burglaries Using Modus Operandi and Spatiotemporal Information, International Journal of Information Technology & Decision Making, 10.1142/S0219622015500339, 15, 01, (23-42), (2016).
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  • Finding Patterns with a Rotten Core: Data Mining for Crime Series with Cores, Big Data, 10.1089/big.2014.0021, 3, 1, (3-21), (2015).