Predicting per capita violent crimes in urban areas: an artificial intelligence approach
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- @Article{castelli:2017:jaihc,
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author = "Mauro Castelli and Raul Sormani and
Leonardo Trujillo and Ales Popovic",
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title = "Predicting per capita violent crimes in urban areas:
an artificial intelligence approach",
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journal = "Journal of Ambient Intelligence and Humanized
Computing",
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year = "2017",
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volume = "8",
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number = "1",
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pages = "29--36",
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month = feb,
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keywords = "genetic algorithms, genetic programming, Evolutionary
Computation, CSGP, LSGP, SVM, ANN, RBF, Crime
Prediction Urban Security Semantics Local Search",
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ISSN = "1868-5145",
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DOI = "doi:10.1007/s12652-015-0334-3",
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size = "8 pages",
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abstract = "A major challenge facing all law-enforcement
organizations is to accurately and efficiently analyse
the growing volumes of crime data in order to extract
useful knowledge for decision makers. This is an
increasingly important task, considering the fast
growth of urban populations in most countries. In
particular, to reconcile urban growth with the need for
security, a fundamental goal is to optimize the
allocation of law enforcement resources. Moreover,
optimal allocation can only be achieved if we can
predict the incidence of crime within different urban
areas. To answer this call, in this paper we propose an
artificial intelligence system for predicting per
capita violent crimes in urban areas starting from
socio-economic data, law-enforcement data and other
crime-related data obtained from different sources. The
proposed framework blends a recently developed version
of genetic programming that uses the concept of
semantics during the search process with a local search
method. To analyze the appropriateness of the proposed
computational method for crime prediction, different
urban areas of the United States have been considered.
Experimental results confirm the suitability of the
proposed method for addressing the problem at hand. In
particular, the proposed method produces a lower error
with respect to the existing state-of-the art
techniques and it is particularly suitable for
analysing large amounts of data. This is an extremely
important feature in a world that is currently moving
towards the development of smart cities.",
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notes = "WEKA",
- }
Genetic Programming entries for
Mauro Castelli
Raul Sormani
Leonardo Trujillo
Ales Popovic
Citations