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Intelligent Crime Investigation Assistance Using Machine Learning Classifiers on Crime and Victim Information

机译:智能犯罪调查辅助在犯罪和受害者信息上使用机器学习分类器

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In order to establish peace and justice in a society, it is essential to make proper and correct investigation of crime incidents. With the expansion of the utilization of computerized system to track crime and violence, computer applications can help law enforcement officers in a significant way. In most cases, crime incidents are kept in police database and these can be used for various helpful purpose. In this experiment, we have collected data of crime scenario from Bangladesh Police that had features such as area of crime, type of crime, number of victims and so on. Then we applied machine learning algorithms on the dataset for prediction of some attributes such as criminal age, sex, race, crime method etc. We used four different algorithms for our research: K-Nearest Neighbor (KNN), Logistic Regression (LR), Random Forest Classifier (RFC), Decision Tree Classifier (DTC). Using the aforementioned algorithms with 10 fold cross validation, we achieved different accuracy from all four attribute labels ranging from an average of approximate 75% to an average of approximate 90%. Despite the clear need of further improvement, the results give clear implications that it is possible to achieve well performing automated system for suspect attribute prediction with further work. Finally, we ended the research by comparing and analyzing all the achieved results.
机译:为了在社会中建立和平与正义,必须对犯罪事件进行适当和正确的调查至关重要。随着计算机化系统的利用率跟踪犯罪和暴力的利用,计算机应用可以以重要的方式帮助执法人员。在大多数情况下,犯罪事件被保存在警察数据库中,这些事件可用于各种有用的目的。在这个实验中,我们已经收集了孟加拉国警察的犯罪情景数据,其中具有犯罪面积,犯罪类型,受害者数量等特征。然后我们在数据集上应用了机器学习算法,以预测某些属性,如刑事年龄,性别,种族,犯罪方法等。我们使用了四种不同的算法来进行我们的研究:K-Collest邻(KNN),Logistic回归(LR),随机森林分类器(RFC),决策树分类器(DTC)。使用具有10倍交叉验证的上述算法,我们从平均约75%的平均值到平均近似90%的平均值实现了不同的精度。尽管有不需要进一步改进的需求,但结果明确阐述了可以实现良好的对嫌疑属性预测进行良好执行的自动化系统,以进一步的工作。最后,我们通过比较和分析所有取得的结果来结束了该研究。

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