支持向量机预测累犯率

IF 0.5 Q4 TELECOMMUNICATIONS
O. Kovalchuk, Ruslan Shevchuk, Ludmila Babala, M. Kasianchuk
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引用次数: 0

摘要

国家内部安全是可持续发展的先决条件之一。为了确保公共安全和公民的人身安全,有必要制定有效措施来减少犯罪和预防未来的犯罪。制定和切实执行打击犯罪或预防某些犯罪的有效战略的出发点是犯罪学预测。个人预测的目的是确定某个人或某群人在未来实施犯罪(犯罪行为)的可能性。在风险评估方面,传统上使用以下机器学习模型。此类模型还可在科学预测重复刑事犯罪的可能性和可能性方面提供定性评估。通过应用机器学习算法获得的知识,可以为司法当局提供预测信息,这些信息对于制定打击犯罪的总体概念至关重要。开发用于犯罪分析和预测的应用模型可以成为一种可靠的工具,为预测未来可能发生的犯罪行为和确保国家内部安全提供决策支持。本文介绍了机器学习算法支持向量机(SVM)的应用结果,用于评估过去已被判定犯有刑事罪的人再犯刑事罪的风险。数据集包括乌克兰 12,000 名刑事被告的犯罪档案信息。所构建的分类器具有较高的精确度(98.67%)、召回率(97.53%)和定性(AUC 等于 0.981)。所创建的 SVM 模型可应用于新的数据集,以预测被定罪者未来再次犯罪的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Support vector machine to criminal recidivism prediction
Internal security of the state is one of the prerequisites for sustainable development. To ensure the public safety and personal security of citizens, it is necessary to develop effective measures to reduce crime and prevent crime in the future. The starting point for the development and practical implementation of an effective strategy to combat crime or prevent certain crimes is criminological forecasting. Individual forecasting is aimed at determining the possibility of committing a crime (crimes) in the future by a certain person or group of persons. For risk assessment, the following are traditionally used machine learning models. Such models also provide qualitative assessments in the scientific prediction of the likelihood and possibilities of committing a repeat criminal offense. Knowledge gained from the application of machine learning algorithm, can provide justice authorities with anticipatory information that is essential for developing a general concept of combating crime. The development of applied models for crime analysis and forecasting can become a reliable tool to support decision-making in predicting likely criminal behavior in the future and ensuring the internal security of the state. In this paper, the results of the application are presented by the machine-learning algorithms Support Vector Machine (SVM) for assessment of the risk of recidivism of criminal offenses by persons who have already been convicted of such a crime in the past. The data set consisted of the 12,000 criminal defendants’ criminal profile information in Ukraine. The constructed classifier has a high precision (98.67%), recall (97.53%) and is qualitative (AUC is equal 0.981). The created SVM model can be applied to new data set to predict the risk of reoffending by convicted individuals in the future.
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来源期刊
CiteScore
1.50
自引率
14.30%
发文量
0
审稿时长
12 weeks
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