Modeling Verdict Outcomes Using Social Network Measures: The Watergate and Caviar Network Cases
Modelling criminal trial verdict outcomes using social network measures is an emerging research area in quantitative criminology. Few studies have yet analyzed which of these measures are the most important for verdict modelling or which data classification techniques perform best for this applicati...
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description | Modelling criminal trial verdict outcomes using social network measures is an emerging research area in quantitative criminology. Few studies have yet analyzed which of these measures are the most important for verdict modelling or which data classification techniques perform best for this application. To compare the performance of different techniques in classifying members of a criminal network, this article applies three different machine learning classifiers-Logistic Regression, Naïve Bayes and Random Forest-with a range of social network measures and the necessary databases to model the verdicts in two real-world cases: the U.S. Watergate Conspiracy of the 1970's and the now-defunct Canada-based international drug trafficking ring known as the Caviar Network. In both cases it was found that the Random Forest classifier did better than either Logistic Regression or Naïve Bayes, and its superior performance was statistically significant. This being so, Random Forest was used not only for classification but also to assess the importance of the measures. For the Watergate case, the most important one proved to be betweenness centrality while for the Caviar Network, it was the effective size of the network. These results are significant because they show that an approach combining machine learning with social network analysis not only can generate accurate classification models but also helps quantify the importance social network variables in modelling verdict outcomes. We conclude our analysis with a discussion and some suggestions for future work in verdict modelling using social network measures. |
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Few studies have yet analyzed which of these measures are the most important for verdict modelling or which data classification techniques perform best for this application. To compare the performance of different techniques in classifying members of a criminal network, this article applies three different machine learning classifiers-Logistic Regression, Naïve Bayes and Random Forest-with a range of social network measures and the necessary databases to model the verdicts in two real-world cases: the U.S. Watergate Conspiracy of the 1970's and the now-defunct Canada-based international drug trafficking ring known as the Caviar Network. In both cases it was found that the Random Forest classifier did better than either Logistic Regression or Naïve Bayes, and its superior performance was statistically significant. This being so, Random Forest was used not only for classification but also to assess the importance of the measures. For the Watergate case, the most important one proved to be betweenness centrality while for the Caviar Network, it was the effective size of the network. These results are significant because they show that an approach combining machine learning with social network analysis not only can generate accurate classification models but also helps quantify the importance social network variables in modelling verdict outcomes. We conclude our analysis with a discussion and some suggestions for future work in verdict modelling using social network measures.</description><identifier>ISSN: 1932-6203</identifier><identifier>EISSN: 1932-6203</identifier><identifier>DOI: 10.1371/journal.pone.0147248</identifier><identifier>PMID: 26824351</identifier><language>eng</language><publisher>United States: Public Library of Science</publisher><subject>Algorithms ; Analysis ; Artificial intelligence ; Bayesian analysis ; Biology and Life Sciences ; Classification ; Classifiers ; Computer and Information Sciences ; Computer programs ; Control ; Crime ; Crime - psychology ; Criminal Law ; Criminology ; Data mining ; Data processing ; Drug traffic ; Forests ; Humans ; Information systems ; International conferences ; Learning algorithms ; Machine learning ; Modelling ; Models, Theoretical ; Network analysis ; Organized crime ; Physical Sciences ; Regression analysis ; Research and Analysis Methods ; Social discrimination learning ; Social factors ; Social network analysis ; Social Networking ; Social networks ; Social organization ; Social Sciences ; Statistical analysis ; Studies</subject><ispartof>PloS one, 2016-01, Vol.11 (1), p.e0147248-e0147248</ispartof><rights>COPYRIGHT 2016 Public Library of Science</rights><rights>2016 Masías et al. This is an open access article distributed under the terms of the Creative Commons Attribution License: http://creativecommons.org/licenses/by/4.0/ (the “License”), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. 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Mauricio</au><au>Morselli, Carlo</au><au>Crespo, Fernando</au><au>Vargas, Augusto</au><au>Laengle, Sigifredo</au><au>Ponti, Giovanni</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Modeling Verdict Outcomes Using Social Network Measures: The Watergate and Caviar Network Cases</atitle><jtitle>PloS one</jtitle><addtitle>PLoS One</addtitle><date>2016-01-29</date><risdate>2016</risdate><volume>11</volume><issue>1</issue><spage>e0147248</spage><epage>e0147248</epage><pages>e0147248-e0147248</pages><issn>1932-6203</issn><eissn>1932-6203</eissn><abstract>Modelling criminal trial verdict outcomes using social network measures is an emerging research area in quantitative criminology. Few studies have yet analyzed which of these measures are the most important for verdict modelling or which data classification techniques perform best for this application. To compare the performance of different techniques in classifying members of a criminal network, this article applies three different machine learning classifiers-Logistic Regression, Naïve Bayes and Random Forest-with a range of social network measures and the necessary databases to model the verdicts in two real-world cases: the U.S. Watergate Conspiracy of the 1970's and the now-defunct Canada-based international drug trafficking ring known as the Caviar Network. In both cases it was found that the Random Forest classifier did better than either Logistic Regression or Naïve Bayes, and its superior performance was statistically significant. This being so, Random Forest was used not only for classification but also to assess the importance of the measures. For the Watergate case, the most important one proved to be betweenness centrality while for the Caviar Network, it was the effective size of the network. These results are significant because they show that an approach combining machine learning with social network analysis not only can generate accurate classification models but also helps quantify the importance social network variables in modelling verdict outcomes. We conclude our analysis with a discussion and some suggestions for future work in verdict modelling using social network measures.</abstract><cop>United States</cop><pub>Public Library of Science</pub><pmid>26824351</pmid><doi>10.1371/journal.pone.0147248</doi><oa>free_for_read</oa></addata></record> |
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subjects | Algorithms Analysis Artificial intelligence Bayesian analysis Biology and Life Sciences Classification Classifiers Computer and Information Sciences Computer programs Control Crime Crime - psychology Criminal Law Criminology Data mining Data processing Drug traffic Forests Humans Information systems International conferences Learning algorithms Machine learning Modelling Models, Theoretical Network analysis Organized crime Physical Sciences Regression analysis Research and Analysis Methods Social discrimination learning Social factors Social network analysis Social Networking Social networks Social organization Social Sciences Statistical analysis Studies |
title | Modeling Verdict Outcomes Using Social Network Measures: The Watergate and Caviar Network Cases |
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