Jiang Dong, Wu Jiajie, Ding Fangyu, Ide Tobias, Scheffran Jürgen, Helman David, Zhang Shize, Qian Yushu, Fu Jingying, Chen Shuai, Xie Xiaolan, Ma Tian, Hao Mengmeng, Ge Quansheng
Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing, 100101, China.
College of Resources and Environment, University of Chinese Academy of Sciences, Beijing, 100049, China.
Heliyon. 2023 Aug 6;9(8):e18895. doi: 10.1016/j.heliyon.2023.e18895. eCollection 2023 Aug.
Human security is threatened by terrorism in the 21st century. A rapidly growing field of study aims to understand terrorist attack patterns for counter-terrorism policies. Existing research aimed at predicting terrorism from a single perspective, typically employing only background contextual information or past attacks of terrorist groups, has reached its limits. Here, we propose an integrated deep-learning framework that incorporates the background context of past attacked locations, social networks, and past actions of individual terrorist groups to discover the behavior patterns of terrorist groups. The results show that our framework outperforms the conventional base model at different spatio-temporal resolutions. Further, our model can project future targets of active terrorist groups to identify high-risk areas and offer other attack-related information in sequence for a specific terrorist group. Our findings highlight that the combination of a deep-learning approach and multi-scalar data can provide groundbreaking insights into terrorism and other organized violent crimes.
21世纪,人类安全受到恐怖主义的威胁。一个快速发展的研究领域旨在了解恐怖袭击模式,以制定反恐政策。现有研究通常仅从单一角度预测恐怖主义,仅利用背景上下文信息或恐怖组织过去的袭击事件,已达到其极限。在此,我们提出了一个综合深度学习框架,该框架整合了过去袭击地点的背景信息、社交网络以及单个恐怖组织的过往行动,以发现恐怖组织的行为模式。结果表明,我们的框架在不同时空分辨率下优于传统基础模型。此外,我们的模型可以预测活跃恐怖组织未来的目标,识别高风险地区,并按顺序为特定恐怖组织提供其他与袭击相关的信息。我们的研究结果突出表明,深度学习方法与多尺度数据相结合可以为恐怖主义和其他有组织暴力犯罪提供开创性的见解。