基于投票分类器的犯罪预测与预测

D. M, Hasifa A S, Merin Meleet
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引用次数: 2

摘要

警务战略的制定和犯罪预防和控制方案的实施在很大程度上依赖于犯罪预测。在印度,可认定的犯罪数量正在逐渐上升。这些罪行包括《印度刑法典》所涵盖的罪行以及各种特别法和地方法所涵盖的罪行。在这项研究中,各种机器学习算法被用来分析与犯罪有关的数据,这些数据将给出一个地区的犯罪行为,这可能有助于预防犯罪。KNN、随机森林、自适应增强分类器、梯度增强分类器和额外树分类器等分类算法在南班加罗尔的犯罪数据集上分别进行了测试。后来,为了平衡各自的缺点,将这五种算法结合起来使用投票分类器技术来获得更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crime Prediction and Forecasting using Voting Classifier
The creation of policing strategies and the implementation of crime prevention and control programmes rely heavily on crime prediction. In India, the number of cognizable offences are gradually rising. These offences include those that are covered by the Indian Penal Code as well as those covered by a variety of Special and Local Laws. In this study, various machine learning algorithms are used to analyze data related to crime which will give the behaviors in crime over an area, that might be helpful in crime prevention. Classification Algorithms such as KNN, Random Forest, Adaptive Boosting Classifier, Gradient Boosting Classifier, and Extra Trees Classifier were tested individually on a crime dataset based in South Bangalore. Later, these five algorithms were combined to achieve better results using Voting Classifier Technique in order to balance out their individual weaknesses.
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