Wang Siyi, Wang Xu, Li Chenlong
Department of Mathematics, Wilfrid Laurier University, Waterloo, ON N2L 3C5, Canada.
College of Mathematics, Taiyuan University of Technology, Taiyuan 030024, China.
Entropy (Basel). 2023 Jun 30;25(7):1011. doi: 10.3390/e25071011.
Rampant terrorism poses a serious threat to the national security of many countries worldwide, particularly due to separatism and extreme nationalism. This paper focuses on the development and application of a temporal self-exciting point process model to the terror data of three countries: the US, Turkey, and the Philippines. To account for occurrences with the same time-stamp, this paper introduces the order mark and reward term in parameter selection. The reward term considers the triggering effect between events in the same time-stamp but different order. Additionally, this paper provides comparisons between the self-exciting models generated by day-based and month-based arrival times. Another highlight of this paper is the development of a model to predict the number of terror events using a combination of simulation and machine learning, specifically the random forest method, to achieve better predictions. This research offers an insightful approach to discover terror event patterns and forecast future occurrences of terror events, which may have practical application towards national security strategies.
猖獗的恐怖主义对全球许多国家的国家安全构成严重威胁,特别是由于分裂主义和极端民族主义。本文重点研究了时间自激点过程模型在三个国家(美国、土耳其和菲律宾)恐怖数据中的发展与应用。为了处理具有相同时间戳的事件,本文在参数选择中引入了顺序标记和奖励项。奖励项考虑了同一时间戳但顺序不同的事件之间的触发效应。此外,本文还比较了基于日到达时间和基于月到达时间生成的自激模型。本文的另一个亮点是开发了一个模型,通过结合模拟和机器学习(特别是随机森林方法)来预测恐怖事件的数量,以实现更好的预测。这项研究提供了一种有见地的方法来发现恐怖事件模式并预测未来恐怖事件的发生,这可能对国家安全战略具有实际应用价值。