Abstract

One of the most important threats to today’s civilization is terrorism. Terrorism not only disturbs the law and order situations in a society but also affects the quality of lives of humans and makes them suppressed physically and emotionally and deprives them of enjoying life. The more the civilizations have advanced, the more the people are working towards exploring different mechanisms to protect the mankind from terrorism. Different techniques have been used as counterterrorism to protect the lives of individuals in society and to improve the quality of life in general. Machine learning methods have been recently explored to develop techniques for counterterrorism based on artificial intelligence (AI). Since deep learning has recently gained more popularity in machine learning domain, in this paper, these techniques are explored to understand the behavior of terrorist activities. Five different models based on deep neural network (DNN) are created to understand the behavior of terrorist activities such as is the attack going to be successful or not? Or whether the attack is going to be suicide or not? Or what type of weapon is going to be used in the attack? Or what type of attack is going to be carried out? Or what region is going to be attacked? The models are implemented in single-layer neural network (NN), five-layer DNN, and three traditional machine learning algorithms, i.e., logistic regression, SVM, and Naïve Bayes. The performance of the DNN is compared with NN and the three machine learning algorithms, and it is demonstrated that the performance in DNN is more than 95% in terms of accuracy, precision, recall, and F1-Score, while ANN and traditional machine learning algorithms have achieved a maximum of 83% accuracy. This concludes that DNN is a suitable model to be used for predicting the behavior of terrorist activities. Our experiments also demonstrate that the dataset for terrorist activities is big data; therefore, a DNN is a suitable model to process big data and understand the underlying patterns in the dataset.

Highlights

  • One of the most important threats to today’s civilization is terrorism, which has affected the quality of lives of people in the whole world [1]

  • Machine learning is an affective model to learn the different factors of terrorism and can be an important tool for law enforcement agencies to deal with terrorism

  • We have investigated artificial intelligence (AI)-based solutions to understand the different factors of terrorism that can help us make prediction in future terrorist activities

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Summary

Introduction

One of the most important threats to today’s civilization is terrorism, which has affected the quality of lives of people in the whole world [1]. According to Global Terrorism Database (GTD), in 2019 alone 1,411 different terrorist attacks have happened, causing 6,362 fatalities and badly. It is important that the emotional reactions of the population is understood in regard to terrorist events so that we are able to design assistance to effectively help those who are suffering from these issues or they do not react to carry out another terrorist activity as a revenge. Because of the complex nature of terrorism, it is difficult to find an effective solution that can be used as a counterterrorism to protect the lives of individuals. Identification of terrorist ideologies and prediction of future terrorist attacks have been proven to be of great importance and time-consuming process

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