Community detection using spectral clustering on sparse geosocial data

نویسندگان

  • Yves van Gennip
  • Blake Hunter
  • Raymond Ahn
  • Peter Elliott
  • Kyle Luh
  • Megan Halvorson
  • Shannon Reid
  • Matthew Valasik
  • James Wo
  • George E. Tita
  • Andrea L. Bertozzi
  • P. Jeffrey Brantingham
چکیده

In this article we identify social communities among gang members in the Hollenbeck policing district in Los Angeles, based on sparse observations of a combination of social interactions and geographic locations of the individuals. This information, coming from LAPD Field Interview cards, is used to construct a similarity graph for the individuals. We use spectral clustering to identify clusters in the graph, corresponding to communities in Hollenbeck, and compare these with the LAPD’s knowledge of the individuals’ gang membership. We discuss different ways of encoding the geosocial information using a graph structure and the influence on the resulting clusterings. Finally we analyze the robustness of this technique with respect to noisy and incomplete data, thereby providing suggestions about the relative importance of quantity versus quality of collected data.

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عنوان ژورنال:
  • SIAM Journal of Applied Mathematics

دوره 73  شماره 

صفحات  -

تاریخ انتشار 2013