Identification of Reasons for Culpable Homicides and Attempted Murders: A Case Study for the Kelaniya Police Division

H. L. A. Weerakoon, N. Chandrasekara
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Abstract

Culpable Homicides and attempted murders are ultimate crimes that could create ripple effects on a society which could go far beyond the original loss of human life. Owing to the unpredictable nature of such crimes that require complex investigations the objective of this study was to come up with an appropriate model to identify the reason for a culpable homicide or an attempted murder using a statistical approach. This study use data collected from 12 Police stations in Kelaniya Police Division relating to the incidents happened between 2010 and 2020. The Pearson Chi-square test was used in identifying the influential explanatory variables. Out of the 18 variables, 8 predictors including Weapon used, Relationship, Location, Civil Status of the perpetrator were statistically associated with the identified reasons at 5 % level of significance. Multinomial logistic regression followed by four data mining models including classification tree, support vector machine (SVM), k-nearest neighbour (KNN), and probabilistic neural network (PNN) were employed initially with a training and testing set which was randomly selected in the ratio 90:10. The 4 data mining models were then fitted separately by using the bagging technique. The accuracies were compared using the confusion matrixes and rates of misclassifications of the critical classes. Out of the fitted models, the highest accuracy of 93.75 % was shown by the PNN model with a spread of 0.6. The identified model can be used as a decision support tool by crime investigators and relevant authorities for wise decision making.
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确定有罪杀人和谋杀未遂的原因:对克拉尼亚警察局的案例研究
有罪的杀人和谋杀未遂是最终的犯罪,可能会在社会上产生涟漪效应,其影响可能远远超出最初的生命损失。由于这类罪行的不可预测性需要进行复杂的调查,因此这项研究的目的是提出一种适当的模式,以利用统计方法确定过失杀人或谋杀未遂的原因。本研究使用了从克拉尼亚警察局12个警察局收集的数据,这些数据与2010年至2020年间发生的事件有关。使用皮尔逊卡方检验来确定有影响的解释变量。在18个变量中,8个预测因子,包括使用的武器、关系、地点、行凶者的公民身份,在统计学上与确定的原因相关,显著性水平为5%。首先采用多项式逻辑回归,然后采用分类树、支持向量机(SVM)、k近邻(KNN)和概率神经网络(PNN)四种数据挖掘模型,并以90:10的比例随机选择训练和测试集。然后使用套袋技术分别拟合4个数据挖掘模型。使用混淆矩阵和关键类别的错误分类率来比较准确率。在拟合的模型中,PNN模型的准确率最高,为93.75%,spread为0.6。所确定的模型可作为犯罪调查人员和有关当局做出明智决策的决策支持工具。
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