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Constructing Bayesian networks for criminal profiling from limited data

Knowledge-based systems, v.21 no.7, 2008년, pp.563 - 572  

Baumgartner, K. (Pratt School of Engineering, Duke University, P.O. Box 90300, 176, Hudson Hall, Research Drive, Durham, NC 27708-0005, USA) ,  Ferrari, S. ,  Palermo, G.

Abstract AI-Helper 아이콘AI-Helper

The increased availability of information technologies has enabled law enforcement agencies to compile databases with detailed information about major felonies. Machine learning techniques can utilize these databases to produce decision-aid tools to support police investigations. This paper presents...

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