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Artificial Intelligence Techniques and External Factors used in Crime Forecasting in Violence and Property: A Review

机译:暴力与财产犯罪预测中使用的人工智能技术和外部因素:综述

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Crime forecasting is beneficial in providing useful information to authorities in planning effective crime prevention measures. The two types of analysis used in crime forecasting are univariate and multivariate. Comparatively, multivariate analysis provides better forecasting accuracy because of its ability to discover crime patterns not previously seen. Crime is strongly influenced by several external factors, including economic, social and demographic. Hence, an analysis is needed to identify and select relevant factors that influence crime and can later be used to improve forecasting accuracy. Neighborhood Component Analysis (NCA) is a reliable form of analysis for identifying significant relationships between factors and crime data. Several model types have been introduced in crime forecasting, including statistical and artificial intelligence models. Recently, the artificial intelligence model has come into favour because of its ability to handle nonlinearity patterns in crime data well. Within the artificial intelligence model, Gradient Tree Boosting (GTB) shows good performance as it produces a robust and reliable forecast result. GTB uses least square function as a loss function for error fitting during training. Findings show that, in addition to using least square function, implementing other standard mathematical functions that fit to the crime data increases forecasting accuracy. In other cases, both NCA and GTB are sensitive to parameters input. Dragonfly Algorithm (DA) is a promising, nature inspired metaheuristic algorithm that is capable of solving such problems.
机译:犯罪预测有利于为规划有效的预防措施提供有用的信息。在预测中使用的两种分析是单变量和多变量。相比之下,多变量分析提供了更好的预测精度,因为它可以发现以前没有看到的犯罪模式。犯罪受到几个外部因素的强烈影响,包括经济,社会和人口统计。因此,需要分析来识别和选择影响犯罪的相关因素,并以后可以用于提高预测准确性。邻域分量分析(NCA)是一种可靠的分析形式,用于识别因素和犯罪数据之间的重要关系。在犯罪预测中引入了几种模型类型,包括统计和人工智能模式。最近,人工智能模型已经受到支持,因为它能够处理犯罪数据中的非线性模式。在人工智能模型中,梯度树升压(GTB)显示出良好的性能,因为它产生了稳健且可靠的预测结果。 GTB使用最小二乘函数作为训练期间出错的损耗功能。结果表明,除了使用最小二乘函数之外,实现适合犯罪数据的其他标准数学函数增加预测精度。在其他情况下,NCA和GTB都对参数输入敏感。 Dragonfly算法(DA)是一种有希望的自然启发了能够解决此类问题的核心算法。

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