Prediction of Terrorist Attacks in China based on BP improved Algorithm and GTD

L. Hong
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引用次数: 0

Abstract

Abstract. Due to the different national conditions, the driving forces and factors of national terrorist attacks vary. Therefore, this paper takes GTD China sample data as the research object to study and predict. The prediction process is as follows: On the basis of the BP network-based model for predicting the most dangerous areas, combined with the GTD sample data, the best number of nodes in the implicit layer of the prediction model is automatically selected by combining the empirical formula with the MATLAB program. Three improved BP algorithms are used to train the network model. The results show that the training error of Levenburg Marquardt algorithm is minimal and the convergence speed is fastest. Through the training and simulation of the model, it is proved that the model has high precision and can meet the requirement of practical application.
基于BP改进算法和GTD的中国恐怖袭击预测
摘要由于国情不同,国家恐怖袭击的动因和因素也不同。因此,本文以GTD中国样本数据为研究对象进行研究和预测。预测过程如下:在基于BP网络的最危险区域预测模型的基础上,结合GTD样本数据,结合经验公式和MATLAB程序,自动选择预测模型隐含层的最佳节点数。采用三种改进的BP算法对网络模型进行训练。结果表明,Levenburg Marquardt算法的训练误差最小,收敛速度最快。通过对模型的训练和仿真,证明该模型具有较高的精度,能够满足实际应用的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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