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Prediction of Crime Hotspots based on Spatial Factors of Random Forest

机译:基于随机森林空间因子的犯罪热点预测

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Crime has always been one of the important social issues that people care about. In the problem of urban security, preventing and reducing crime is one of the primary tasks of the police. Crime hotspot prediction can use historical crime data to infer geographic areas where crime may occur in the future. Machine learning is the mainstream method of current crime prediction method.But in the era of big data, more and more data information appears in the eyes of people, it is far from enough to use historical crime data to infer crime hotspots. Therefore, this paper is based on the random forest algorithm, first of all,divides the study areas into four categories according to the hot spot distribution based on the historical crime data: frequent hot areas, common hot areas, occasional hot areas and non-hot areas,and then, representative covariates from the non-historical crime data are added to the prediction model to explore the changes in the result accuracy of crime prediction based on the historical crime data by integrating different covariates. The data is based on real data, and the experimental results show that compared with the inference method based only on historical crime data, the accuracy of the model with covariates is improved compared with that without covariates.
机译:犯罪一直是人们关心的重要社会问题之一。在城市安全问题上,预防和减少犯罪是警察的主要任务之一。犯罪热点预测可以使用历史犯罪数据来推断将来可能发生犯罪的地理区域。机器学习是当前犯罪预测方法的主流方法,但是在大数据时代,越来越多的数据信息出现在人们的眼中,仅靠历史犯罪数据来推断犯罪热点还远远不够。因此,本文基于随机森林算法,首先根据历史犯罪数据根据热点分布将研究区域分为四类:频繁热点区域,常见热点区域,偶发热点区域和非热点区域。然后,将来自非历史犯罪数据的代表性协变量添加到预测模型中,通过整合不同的协变量来探索基于历史犯罪数据的犯罪预测结果准确性的变化。数据是基于真实数据的,实验结果表明,与仅基于历史犯罪数据的推理方法相比,具有协变量的模型的准确性要高于没有协变量的模型。

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