Stacking Ensemble Learning with Regression Models for Predicting Damage from Terrorist Attacks

Thitipong Kawichai
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Abstract

Terrorist attacks can cause unexpectedly enormous damage to lives and property. To prevent and mitigate damage from terrorist activities, governments and related organizations must have suitable measures and efficient tools to cope with terrorist attacks. This work proposed a new method based on stacking ensemble learning and regression for predicting damage from terrorist attacks. First, two-layer stacking classifiers were developed and used to indicate if a terrorist attack can cause deaths, injuries, and property damage. For fatal and injury attacks, regression models were utilized to forecast the number of deaths and injuries, respectively. Consequently, the proposed method can efficiently classify casualty terrorist attacks with an average area under precision-recall curves (AUPR) of 0.958. Furthermore, the stacking model can predict property damage attacks with an average AUPR of 0.910. In comparison with existing methods, the proposed method precisely estimates the number of fatalities and injuries with the lowest mean absolute errors of 1.22 and 2.32 for fatal and injury attacks, respectively. According to the superior performance shown, the stacking ensemble models with regression can be utilized as an efficient tool to support emergency prevention and management of terrorist attacks.
堆叠集合学习与回归模型,预测恐怖袭击造成的损失
恐怖袭击会对生命和财产造成意想不到的巨大损失。为了预防和减轻恐怖活动造成的损失,政府和相关组织必须有合适的措施和有效的工具来应对恐怖袭击。这项工作提出了一种基于堆叠集合学习和回归的新方法,用于预测恐怖袭击造成的损失。首先,开发了两层堆叠分类器,用于指示恐怖袭击是否会造成人员伤亡和财产损失。对于造成死亡和受伤的袭击,利用回归模型分别预测死亡和受伤人数。因此,所提出的方法可以有效地对伤亡恐怖袭击进行分类,精确度-召回曲线下的平均面积(AUPR)为 0.958。此外,叠加模型可以预测财产损失攻击,平均 AUPR 为 0.910。与现有方法相比,所提出的方法能精确估算死亡和受伤人数,其平均绝对误差最小,分别为 1.22 和 2.32。根据所显示的优越性能,利用回归堆叠集合模型可作为支持恐怖袭击应急预防和管理的有效工具。
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