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Criminal Combat: Crime Analysis and Prediction Using Machine Learning

机译:犯罪作战:使用机器学习的犯罪分析与预测

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摘要

Crime is one of the most critical issues that the entire world is facing nowadays. The rate of crime should be minimized by using different techniques of machine learning in order to safeguard the global community from getting trapped into the activities of the criminals or anti-social elements. The paper identifies the crime patterns by utilizing the different mathematical and statistical models to forecast the probability of the crime. Crime datasets of the State of North Carolina have been used for this purpose. The paper aims to check different statistical parameters and Figure out the most common factors that affect crime. The univariate and bivariate exploratory analysis is used for extracting the most dominant features. The Akaike Information Criteria (AIC) method is used to drop out unimportant attributes followed by testing of model through Mean Absolute Error (MAE), Median Squared Error (MSE) and Root Mean Squared Error (RMSE) techniques. The work done in the paper concludes that crime predictability and criminology can be very useful in eliminating menace of crime from our society. These mathematical and statistical models can aid us in the process of making our society a safer place to live in.
机译:犯罪是整个世界所面临的最关键问题之一。通过使用不同的机器学习技术应尽量减少犯罪率,以便保护全球社区被困在犯罪分子或反社会的活动中。本文通过利用不同的数学和统计模型来预测犯罪的可能性来确定犯罪模式。北卡罗来纳州的犯罪数据集已用于此目的。本文旨在检查不同的统计参数,并弄清楚影响犯罪的最常见因素。单变量和双变量探索性分析用于提取最占主导地位的特征。 Akaike信息标准(AIC)方法用于删除不重要的属性,然后通过平均绝对误差(MAE),中值方形错误(MSE)和均方根上的模型进行测试,然后进行模型测试。本文中所做的工作得出结论,犯罪可预测性和犯罪学极为有用,可从我们社会中消除犯罪的威胁。这些数学和统计模型可以帮助我们让我们的社会成为一个更安全的住宿地点。

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