用于刑事司法决策支持的机器学习集群模型

O. Kovalchuk
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摘要

在现代数字社会中,信息技术在安全政策中发挥着至关重要的作用。世界各地的罪犯人数不断增加,犯罪范围不断扩大,给公民人身安全、国家内部安全和国际安全带来了严重威胁。确定囚犯的个人特征与其犯罪累犯之间的联系有助于破获连环犯罪,制定新的犯罪预防战略,并为公共安全决策提供可靠的支持。 本文介绍的工作是刑事司法决策系统信息和分析支持开发研究的一部分。本文件介绍了一种新的犯罪特征分析方法。它是对一个由 13,010 名罪犯组成的独特现实世界数据集的案例研究。K 均值聚类技术用于确定决定罪犯重复犯罪倾向的重要指标(囚犯的个人特征)。所建立的聚类模型明显表明了重犯倾向与犯罪特征的以下要素之间的联系:前科数量、首次定罪时的年龄、有条件定罪的存在以及提前释放。所开发的模型可应用于新的刑事定罪数据集。信息技术与刑事司法系统的动态互动将有助于减少犯罪和加强内部安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A MACHINE LEARNING CLUSTER MODEL FOR THE DECISION-MAKING SUPPORT IN CRIMINAL JUSTICE
In a modern digital society, information technologies play a crucial role in security policy. The increase in the number of criminals and the expansion of the range of crimes committed by them, which is observed all over the world, poses serious risks to the personal safety of citizens, the internal security of the country, and international security. Identifying links between the individual characteristics of prisoners and their criminal recidivism can help to solve serial crimes, develop new crime prevention strategies, and provide reliable support for public safety decisions. The presented work is a part of research on the development of information and analytical support for decision-making systems in criminal justice. This document presents a new analytical approach to criminal profiling. It is a case study of a unique real-world dataset of 13,010 criminal convicts. The k-means clustering technique was used to determine significant indicators (individual characteristics of prisoners) that determine the propensity of convicts to commit repeated criminal offenses. The built clustering model makes obvious the connection between the propensity for criminal recidivism and the following elements of the criminal profile: the number of previous convictions, the age at the time of the first conviction, the presence of conditional convictions, and early releases. The developed models can be applied to new criminal convicted datasets. The dynamic interaction of information technology and the criminal justice system will help reduce crime and strengthen internal security.
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