Title :
N-gram based malicious code detection using Support Vector Machine learning approach
Author :
Santhosh, Soumya ; Shreeja R
Author_Institution :
Department of Computer Science and Engineering, Mes College of Engineering, Kuttippuram, India
Abstract :
The development of Information and Communication gives a lot of convenience in our life, but on the other hand the new cyber threat such as viruses and computer intrusions also increases. This work discussed about the various classification algorithms such as K Nearest Neighbor (K-NN), Naive Bayes (NB) classifier and Support Vector Machine (SVM). Since it has been found that the SVM classification was efficient among the three classifiers as it can effectively perform linear classification and nonlinear classification of data, detects unknown and known malicious codes and has the capacity to handle large amount of features than the other two classifiers. This work focus on the detection of malicious code based on N-Gram and Support Vector Machine (SVM). It has been found that this approach can efficiently detect and classify the malicious data than other classifiers discussed here.
Keywords :
Information Gain; K-Nearest Neighbour; Malicious Code; Naive Bayes; Support Vector Machine; Term Frequency;
Conference_Titel :
Communication and Computing (ARTCom2012), Fourth International Conference on Advances in Recent Technologies in
Conference_Location :
Bangalore, India
DOI :
10.1049/cp.2012.2536