利用机器学习算法了解韩国的性凶杀案。

IF 1 3区 社会学 Q2 LAW Behavioral Sciences & the Law Pub Date : 2024-06-10 DOI:10.1002/bsl.2676
Hyeokjun Kwon, Sanggyung Lee, Hana Georgoulis, Eric Beauregard, Jonghan Sea
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引用次数: 0

摘要

本研究旨在确认性杀人案件的特征,并探索有效区分性杀人案件和非性杀人案件的变量。此外,本研究还采用了在犯罪学领域备受关注的新方法,如机器学习法,来探索韩国性杀人案件的理想分类算法和性杀人案件的模式。为此,利用八种算法对 542 起杀人案件进行了分析,并对每种算法的分类性能以及变量的重要性进行了分析。分析结果表明,Naive Bayes、K-Nearest Neighbors 和 RF 算法显示出良好的分类准确性,一般而言,关系、婚姻、计划、个人武器和过度杀戮等因素被认为是区分韩国性杀人案件的关键变量。此外,在黑暗中(夜间)发生的犯罪和尸体处理等犯罪现场信息也非常重要。本研究提出了提高犯罪调查效率的方法,并通过对国内尚未深入探讨的性凶杀案进行更科学的理解,推进韩国性凶杀案的研究。
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Understanding sexual homicide in Korea using machine learning algorithms

The current study was conducted to confirm the characteristics in sexual homicide and to explore variables that effectively differentiate sexual homicide and nonsexual homicide. Further, newer methods that have received attention in criminology, such as the machine learning method, were used to explore the ideal algorithm for classifying sexual homicide and patterns for sexual homicide in Korea. To do this, 542 homicide cases were analyzed utilizing eight algorithms, and the classification performance of each algorithm was analyzed along with the importance of variables. The results of the analysis revealed that the Naive Bayes, K-Nearest Neighbors, and RF algorithms demonstrate good classification accuracy, and generally, factors such as relationships, marriage, planning, personal weapons, and overkill were identified as crucial variables that distinguish sexual homicide in Korea. In addition, the crime scene information of the crime occurring in the dark (at night) and body disposal were found to have high importance. The current study proposes ways to enhance the efficacy of crime investigation and advance the research on sexual homicides in Korea through a more scientific understanding of sexual homicide that has not been thoroughly explored domestically.

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来源期刊
CiteScore
2.50
自引率
7.10%
发文量
50
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