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Automatic and objective gradation of 114 183 terrorist attacks using a machine learning approach

  • Chi, Wanle (Department of Information Technology, Wenzhou Polytechnic) ;
  • Du, Yihong (Department of Information Technology, Wenzhou Polytechnic)
  • Received : 2020.04.07
  • Accepted : 2020.08.12
  • Published : 2021.08.01

Abstract

Catastrophic events cause casualties, damage property, and lead to huge social impacts. To build common standards and facilitate international communications regarding disasters, the relevant authorities in social management rank them in subjectively imposed terms such as direct economic losses and loss of life. Terrorist attacks involving uncertain human factors, which are roughly graded based on the rule of property damage, are even more difficult to interpret and assess. In this paper, we collected 114 183 open-source records of terrorist attacks and used a machine learning method to grade them synthetically in an automatic and objective way. No subjective claims or personal preferences were involved in the grading, and each derived common factor contains the comprehensive and rich information of many variables. Our work presents a new automatic ranking approach and is suitable for a broad range of gradation problems. Furthermore, we can use this model to grade all such attacks globally and visualize them to provide new insights.

Keywords

Acknowledgement

This work was supported by the Scientific Research Project of Zhejiang Natural Science Foundation, P.R. China (No. LY20G030018) and the Scientific Research Project of Wenzhou Science and Technology Bureau, P.R. China (No. 2013R0017).

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