Individual Submission Summary
Share...

Direct link:

Examining the Spatial and Temporal Patterns of Crime: A Data-Driven Approach

Wed, Nov 13, 12:30 to 1:50pm, Sierra E - 5th Level

Abstract

Building upon prior work, we propose an alternative way to look at spatial patterns of crime concentration and the temporal stability of it. We first identify high-crime cluster using the sample block groups in New York City by employing a k-means clustering method. We then examine the temporal stability of the high-crime cluster over time. We also longitudinally assess how our high-crime cluster classification is associated with the actual amount of crime, while accounting for the measures of social and physical environments. We observed that about 6-12 percent of total areas are identified to be in the high-crime cluster. We also found that block groups identified to be high-crime cluster in one year are more likely to be that way in the next year. We hope future research may consider using data-driven approaches to expand understanding of spatial and temporal crime patterns.

Authors