Metamorphic Virus Detection Based on Bayesian Network
Publish place: The Second International Conference on Intelligent Information Networks and Complex Systems
Publish Year: 1393
Type: Conference paper
Language: English
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Document National Code:
IINC02_007
Index date: 14 April 2015
Metamorphic Virus Detection Based on Bayesian Network abstract
Metamorphic virus detection is one of the most challenging tasks of antivirus software and the most difficult ones are among known viruses. In thisarticle we have used Bayesian network to recognize these kinds of viruses. The body of these viruses is made of assembly codes. At first opcodes are extracted as 1-gram from virus body, these opcodes are known as the characteristics of Bayesian network, extracting these characteristics reduce dramatically the Computational complexity, memory and time used. After that, it’s time to draw the Bayesian network, before drawing,Bayesian network should be training. Bayesian network learning is known as a NP-hard problem because of this utilizing exploratory research has proven that it can behelpful in a lot of cases; in which we have used hill climbing algorithm. This method is compared todifferent Hidden Markov Model and the methods ofrole-opcode are also compared. Experimental result shows that, utilizing Bayesian network, the accuracy of virus detection increase, and other classify are not superlative that Bayesian network.
Metamorphic Virus Detection Based on Bayesian Network authors
Neda Shabani
Department of Computer Engineering Mashhad Branch, Islamic Azad University Mashhad, Iran
Majid Vafaei Jahan
Department of Computer Engineering Mashhad Branch, Islamic Azad University Mashhad, Iran
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