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Crime prediction by data-driven Green's function method

机译:数据驱动格林函数法的犯罪预测

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We develop an algorithm that forecasts cascading events, by employing a Green's function scheme on the basis of the self-exciting point process model. This method is applied to open data of 10 types of crimes happened in Chicago. It shows a good prediction accuracy superior to or comparable to the standard methods which are the expectation-maximization method and prospective hotspot maps method. We find a cascade influence of the crimes that has a long-time, logarithmic tail; this result is consistent with an earlier study on burglaries. This long-tail feature cannot be reproduced by the other standard methods. In addition, a merit of the Green's function method is the low computational cost in the case of high density of events and/or large amount of the training data. (C) 2019 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
机译:我们通过在自激点过程模型的基础上采用格林函数方案,开发了一种预测级联事件的算法。该方法适用于公开发生在芝加哥的10种犯罪类型的数据。它显示出优于或可与预期最大方法和预期热点图方法等标准方法相媲美的良好预测精度。我们发现,这种犯罪的级联影响具有长期的对数尾巴。这个结果与早期的盗窃案研究一致。这种长尾特征无法通过其他标准方法重现。另外,格林函数法的优点是在高事件密度和/或大量训练数据的情况下计算成本低。 (C)2019国际预报员协会。由Elsevier B.V.发布。保留所有权利。

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