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An XGBoost-based casualty prediction method for terrorist attacks

机译:基于XGBoost的恐怖袭击伤亡预测方法

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Terrorist attacks have been becoming one of the severe threats to national public security and world peace. Ascertaining whether the behaviors of terrorist attacks will threaten the lives of innocent people is vital in dealing with terrorist attacks, which has a profound impact on the resource optimization configuration. For this purpose, we propose an XGBoost-based casualty prediction algorithm, namely RP-GA-XGBoost, to predict whether terrorist attacks will cause the casualties of innocent civilians. In the proposed RP-GA-XGBoost algorithm, a novel method that incorporates random forest (RF) and principal component analysis (PCA) is devised for selecting features, and a genetic algorithm is used to tune the hyperparameters of XGBoost. The proposed method is evaluated on the public dataset (Global Terrorism Database, GTD) and the terrorist attack dataset in China. Experimental results demonstrate that the proposed algorithm achieves area under curve (AUC) of 87.00%, and accuracy of 86.33% for the public dataset, and sensitivity of 94.00%, AUC of 94.90% for the terrorist attack dataset in China, which proves the superiority and higher generalization ability of the proposed algorithm. Our study, to the best of our knowledge, is the first to apply machine learning in the management of terrorist attacks, which can provide early warning and decision support information for terrorist attack management.
机译:恐怖袭击一直成为国家公共安全和世界和平的严重威胁之一。确定恐怖袭击的行为是否会威胁着无辜人民的生活在处理恐怖主义攻击方面至关重要,这对资源优化配置产生了深远的影响。为此目的,我们提出了一种基于XGBoost的伤亡预测算法,即RP-GA-XGBoost,预测恐怖袭击是否会导致无辜平民的伤亡。在所提出的RP-GA-XGBoost算法中,设计了一种包含随机森林(RF)和主成分分析(PCA)的新方法,用于选择特征,并且遗传算法用于调整XGBoost的超参数。该方法在公共数据集(全球恐怖主义数据库,GTD)和中国的恐怖主义攻击数据集上进行评估。实验结果表明,该算法在曲线(AUC)下的区域达到87.00%,并且对公共数据集的准确性为86.33%,恐怖主义攻击数据集的94.00%的灵敏度为94.90%,这证明了优势提出算法的较高概括能力。我们的研究,据我们所知,是第一个在恐怖主义攻击管理中申请机器学习,这可以为恐怖主义攻击管理提供预警和决策支持信息。

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