Winning the War on Terror: Using "Top-K" Algorithm and CNN to Assess the Risk of Terrorists

Yaojie Wang, Xiaolong Cui, Peiyong He
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引用次数: 0

Abstract

From the perspective of counter-terrorism strategies, terrorist risk assessment has become an important approach for counter-terrorism early warning research. Combining with the characteristics of known terrorists, a quantitative analysis method of active risk assessment method with terrorists as the research object is proposed. This assessment method introduces deep learning algorithms into social computing problems on the basis of information coding technology. We design a special "Top-k" algorithm to screen the terrorism related features, and optimize the evaluation model through convolution neural network, so as to determine the risk level of terrorist suspects. This study provides important research ideas for counter-terrorism assessment, and verifies the feasibility and accuracy of the proposed scheme through a number of experiments, which greatly improves the efficiency of counter-terrorism early warning.
赢得反恐战争:使用“Top-K”算法和CNN来评估恐怖分子的风险
从反恐战略的角度出发,恐怖主义风险评估已成为反恐预警研究的重要手段。结合已知恐怖分子的特点,提出了一种以恐怖分子为研究对象的主动风险评估方法的定量分析方法。这种评估方法在信息编码技术的基础上将深度学习算法引入到社会计算问题中。我们设计了一种特殊的“Top-k”算法来筛选恐怖主义相关特征,并通过卷积神经网络优化评估模型,从而确定恐怖主义嫌疑人的风险等级。本研究为反恐评估提供了重要的研究思路,并通过多次实验验证了所提出方案的可行性和准确性,极大地提高了反恐预警的效率。
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