Graph Based Classifier to Detect Malicious URL
Journal: International Journal of Mechanical and Production Engineering Research and Development (IJMPERD ) (Vol.7, No. 5)Publication Date: 2017-10-31
Authors : Jayakanthan. N; A. V. Ramani;
Page : 223-234
Keywords : Malicious URL; Graph Based Classifier & Detection;
Abstract
Malicious attack is a major issue in cyberspace. The criminal obtains vital information like username, password, and Credit/Debit card numbers, from the victims through deception. Various detection solutions are proposed in recent years. These techniques include blacklist, heuristics, machine learning, similarity and pattern matching methods. But, most of them are heavy weight methodologies in terms of time complexity and requires dedicated server for their execution. A Graph based Classifier to Detect Malicious URL (GCDMU), is proposed in this paper, which is a feature based classifier. It is a light weight, reliable approach and also effective, in detecting malicious URL
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Last modified: 2017-12-21 16:20:56