摘要
Social media are interactive computer mediated technology that facilitates the sharing of information via virtual communities and networks. And Twitter is one of the most popular social media for social interaction and microblogging. This paper introduces an improved system model to analyze twitter data and detect terrorist attack event. In this model, a ternary search is used to find the weights of predefined keywords and the Aho-Corasick algorithm is applied to perform pattern matching and assign the weight which is the main contribution of this paper. Weights are categorized into three categories: Terror attack, Severe Terror Attack and Normal Data and the weights are used as attributes for classification. K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) are two machine learning algorithms used to predict whether a terror attack happened or not. We compare the accuracy with our actual data by using confusion matrix and measure whether our result is right or wrong and the achieved result shows that the proposed model performs better.
Social media are interactive computer mediated technology that facilitates the sharing of information via virtual communities and networks. And Twitter is one of the most popular social media for social interaction and microblogging. This paper introduces an improved system model to analyze twitter data and detect terrorist attack event. In this model, a ternary search is used to find the weights of predefined keywords and the Aho-Corasick algorithm is applied to perform pattern matching and assign the weight which is the main contribution of this paper. Weights are categorized into three categories: Terror attack, Severe Terror Attack and Normal Data and the weights are used as attributes for classification. K-Nearest Neighbor (KNN) and Support Vector Machine (SVM) are two machine learning algorithms used to predict whether a terror attack happened or not. We compare the accuracy with our actual data by using confusion matrix and measure whether our result is right or wrong and the achieved result shows that the proposed model performs better.
作者
Aditi Sarker
Partha Chakraborty
S. M. Shaheen Sha
Mahmuda Khatun
Md. Rakib Hasan
Kawshik Banerjee
Aditi Sarker;Partha Chakraborty;S. M. Shaheen Sha;Mahmuda Khatun;Md. Rakib Hasan;Kawshik Banerjee(Department of Computer Science and Engineering, Comilla University, Cumilla, Bangladesh;Department of Computer Science and Engineering, Jahangirnagar University, Dhaka, Bangladesh;Department of Information and Communication Technology, Comilla University, Cumilla, Bangladesh;Department of Computer Science and Engineering, Rajshahi University of Engineering & Technology, Rajshahi, Bangladesh)