1. Visualization, Feature Selection, Deep Learning: Identifying The Responsible Group for Extreme Acts of Violence
- Author
-
Mahdi Hashemi and Margeret Hall
- Subjects
General Computer Science ,Computer science ,SVM ,Feature extraction ,Decision tree ,Feature selection ,02 engineering and technology ,Machine learning ,computer.software_genre ,feature selection ,decision tree ,0202 electrical engineering, electronic engineering, information engineering ,Multilayer perceptron ,General Materials Science ,visualization ,business.industry ,Dimensionality reduction ,General Engineering ,020207 software engineering ,Violent extremism ,Visualization ,Support vector machine ,Tree (data structure) ,Terrorism ,020201 artificial intelligence & image processing ,lcsh:Electrical engineering. Electronics. Nuclear engineering ,Artificial intelligence ,business ,lcsh:TK1-9971 ,computer - Abstract
The toll of human casualties and psychological impacts on societies make any study on violent extremism worthwhile, let alone attempting to detect patterns among them. This paper is an effort to predict which violent extremist organization (VEO), among 14 currently active ones throughout the world, is responsible for a violent act based on 14 features, including its human and structural tolls, its target type and value, intelligence, and weapons utilized in the attack. Three main steps in our paper include: 1) the visualization of the violent acts through linear and non-linear dimensionality reduction techniques; 2) sequential forward feature selection based on the generalization accuracy of three machine learning models-decision tree, and linear and nonlinear SVM; and 3) employing multilayer perceptron to predict the VEO based on the selected features of a violent act. Top-ranked selected features were related to the target type and plan and the multilayer perceptron achieved up to 40% test accuracy.
- Published
- 2018