基于小波变换和神经网络的犯罪率预测方法

L. Mao, Wei Du
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引用次数: 4

摘要

准确预测犯罪是极具挑战性的。为了提高情景犯罪预防的效率,分析了24小时内犯罪率的时间分布,提出了离散小波变换与弹性反向传播神经网络(DWT-RBPNN)相结合的预测模型。首先,对滑动窗口得到的历史犯罪事件序列进行离散小波变换分解;然后RBPNN训练分解序列来预测未来趋势和细节的发生率。最后,对趋势和细节进行重构,得到最终的预测序列。实验结果表明,与bp神经网络的单一方法相比,该模型对犯罪率的预测具有较高的准确性和可行性。DWTRBPNN模型的应用为情景犯罪预防中的犯罪率预测和预警提供了一个令人兴奋的新领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A method of crime rate forecast based on wavelet transform and neural network
Accurate prediction of crime is highly challenging. In order to improve efficiency of situational crime prevention, the temporal distribution of the crime rate within 24 hours was analysed and a forecast model combining discrete wavelet transform and resilient backpropagation neural network (DWT-RBPNN) is presented. First, historical crime incidence sequences obtained by the sliding window were decomposed by discrete wavelet transform. Then RBPNN trained decomposition sequences to predict the incidence of future trends and details. Finally, the trends and details were reconstructed to get the final prediction sequence. The experimental results showed that the proposed model has relatively high accuracy and feasibility on the crime rate prediction compared with single method of BPNN. The utility of the DWTRBPNN model can offer an exciting new horizon to provide crime rate forecasting and early warning in the situational crime prevention.
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