Central Actor Identification of Crime Group using Semantic Social Network Analysis

S. P. Tahalea, Azhari Sn
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引用次数: 6

Abstract

The Police as law enforcers who authorize in terms of social protection are expected to do both the prevention and investigation efforts also the settlement of criminal cases that occurred in the society. This research can help police to identify the main actor faster and leads to solving crime-cases. The use of overall centrality is very helpful in determining the main actors from other centrality measures. The purpose of this research is to identify the central actor of crimes done by several people. Semantic Social Network Analysis is used to perform central actor identification using five centrality measurements, such as degree centrality, betweenness centrality, closeness centrality, eigenvector centrality, and overall centrality. As for the relationship between actors, this research used social relation such as friendship, colleague, family, date or lover, and acquaintances. The relationship between actors is measured by first four centrality measures then accumulated by overall centrality to determine the main actor. The result showed 80.39% accuracy from 102 criminal cases collected with at least 3 actors involved in each case.
基于语义社会网络分析的犯罪集团中心行为人识别
警察作为在社会保护方面授权的执法者,既要进行预防和调查工作,也要解决社会上发生的刑事案件。这项研究可以帮助警方更快地识别主要行为者,从而解决犯罪案件。整体中心性的使用对于从其他中心性度量中确定主要参与者非常有帮助。这项研究的目的是确定几个人犯下的罪行的核心行为者。语义社会网络分析使用五种中心性度量,如度中心性、中间中心性、接近中心性、特征向量中心性和整体中心性,来执行中心行动者识别。对于演员之间的关系,本研究使用了社会关系,如友谊、同事、家人、约会对象或爱人、熟人。参与者之间的关系通过前四个中心性度量来衡量,然后通过总体中心性累积来确定主要参与者。结果表明,在收集到的102起犯罪案件中,每起案件至少涉及3名行为者,准确率为80.39%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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