Geospatial-temporal analysis and classification of criminal data in Manila

The use of technology on criminal data has proven to be a valuable tool in forecasting criminal activity. Crime prediction is one of the approaches that help reduce and deter crimes. In this paper, we perform geospatial analysis using the kernel density estimation in ArcGIS 10 to identify the spatio...

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Main Authors: Baculo, Maria Jeseca C., Marzan, Charlie S., Bulos, Remedios De Dios, Ruiz, Conrado
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Published: Animo Repository 2017
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Online Access:https://animorepository.dlsu.edu.ph/faculty_research/2707
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Institution: De La Salle University
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-37062021-10-28T00:24:11Z Geospatial-temporal analysis and classification of criminal data in Manila Baculo, Maria Jeseca C. Marzan, Charlie S. Bulos, Remedios De Dios Ruiz, Conrado The use of technology on criminal data has proven to be a valuable tool in forecasting criminal activity. Crime prediction is one of the approaches that help reduce and deter crimes. In this paper, we perform geospatial analysis using the kernel density estimation in ArcGIS 10 to identify the spatiotemporal hotspots in Manila, the most densely populated city in the Philippines. We also compared the performance measures of the BayesNet, Naïve Bayes, J48, Decision Stump, and Random Forest classifiers in predicting possible crime activities. The results presented in this paper aim to provide insights on crime patterns as well as help law enforcement agencies design and implement approaches to respond to criminal activities. © 2017 IEEE. 2017-12-04T08:00:00Z text https://animorepository.dlsu.edu.ph/faculty_research/2707 Faculty Research Work Animo Repository Crime analysis--Philippines Crime forecasting--Philippines Geospatial data—Computer processing Computer Sciences
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Crime analysis--Philippines
Crime forecasting--Philippines
Geospatial data—Computer processing
Computer Sciences
spellingShingle Crime analysis--Philippines
Crime forecasting--Philippines
Geospatial data—Computer processing
Computer Sciences
Baculo, Maria Jeseca C.
Marzan, Charlie S.
Bulos, Remedios De Dios
Ruiz, Conrado
Geospatial-temporal analysis and classification of criminal data in Manila
description The use of technology on criminal data has proven to be a valuable tool in forecasting criminal activity. Crime prediction is one of the approaches that help reduce and deter crimes. In this paper, we perform geospatial analysis using the kernel density estimation in ArcGIS 10 to identify the spatiotemporal hotspots in Manila, the most densely populated city in the Philippines. We also compared the performance measures of the BayesNet, Naïve Bayes, J48, Decision Stump, and Random Forest classifiers in predicting possible crime activities. The results presented in this paper aim to provide insights on crime patterns as well as help law enforcement agencies design and implement approaches to respond to criminal activities. © 2017 IEEE.
format text
author Baculo, Maria Jeseca C.
Marzan, Charlie S.
Bulos, Remedios De Dios
Ruiz, Conrado
author_facet Baculo, Maria Jeseca C.
Marzan, Charlie S.
Bulos, Remedios De Dios
Ruiz, Conrado
author_sort Baculo, Maria Jeseca C.
title Geospatial-temporal analysis and classification of criminal data in Manila
title_short Geospatial-temporal analysis and classification of criminal data in Manila
title_full Geospatial-temporal analysis and classification of criminal data in Manila
title_fullStr Geospatial-temporal analysis and classification of criminal data in Manila
title_full_unstemmed Geospatial-temporal analysis and classification of criminal data in Manila
title_sort geospatial-temporal analysis and classification of criminal data in manila
publisher Animo Repository
publishDate 2017
url https://animorepository.dlsu.edu.ph/faculty_research/2707
_version_ 1715215720362541056