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   Feature-Based Malicious Url and Attack Type Detection Using Multi-Class Classification  
   
نویسنده Patil Dharmaraj R. ,Patil Jayantrao B.
منبع The Isc International Journal Of Information Security - 2018 - دوره : 10 - شماره : 2 - صفحه:141 -162
چکیده    Nowadays, malicious urls are the common threat to the businesses, social networks, netbanking. existing approaches have focused on binary detection i.e., either the url is malicious or benign. very few literature is found which focused on the detection of malicious urls and their attack types. hence, it becomes necessary to know the attack type and adopt an effective countermeasure. this paper proposes a methodology to detect malicious urls and the type of attacks based on multiclass classification. in this work, we propose 42 new features of spam, phishing and malware urls. these features are not considered in the earlier studies for malicious urls detection and attack types identification. binary and multiclass dataset is constructed using 49935 malicious and benign urls. it consists of 26041 benign and 23894 malicious urls containing 11297 malware, 8976 phishing and 3621 spam urls. to evaluate the proposed approach, the stateoftheart supervised batch and online machine learning classifiers are used. experiments are performed on the binary and multiclass dataset using the aforementioned machine learning classifiers. it is found that, confidence weighted learning classifier achieves the best 98.44% average detection accuracy with 1.56% errorrate in the multiclass setting and 99.86% detection accuracy with negligible errorrate of 0.14% in binary setting using our proposed url features.
کلیدواژه Malicious Urls ,Feature Extraction ,Multiclass Classification ,Batch And Online Learning ,Web Security
آدرس R.C. Patel Institute Of Technology, Department Of Computer Engineering, India, R.C. Patel Institute Of Technology, Department Of Computer Engineering, India
پست الکترونیکی jbpatil@hotmail.com
 
     
   
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