Feature Reduction and Optimization of Malware Detection System Using Ant Colony Optimization and Rough Sets

Author:

Penmatsa Ravi Kiran Varma1ORCID,Kalidindi Akhila1,Mallidi S. Kumar Reddy2

Affiliation:

1. MVGR College of Engineering, India

2. Sri Vasavi Engineering College, India

Abstract

Malware is a malicious program that can cause a security breach of a system. Malware detection and classification is one of the burning topics of research in information security. Executable files are the major source of input for static malware detection. Machine learning techniques are very efficient in behavioral-based malware detection and need a dataset of malware with different features. In windows, malware can be detected by analyzing the portable executable (PE) files. This work contributes to identifying the minimum feature set for malware detection employing a rough set dependent feature significance combined with Ant Colony Optimization (ACO) as the heuristic-search technique. A malware dataset named claMP with both integrated features and raw features was considered as the benchmark dataset for this work. The analytical results prove that 97.15% and 92.8% data size optimization has been achieved with a minimum loss of accuracy for claMP integrated and raw datasets, respectively.

Publisher

IGI Global

Subject

Information Systems

Reference45 articles.

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2. Ajit. (2016). A Malware classifier dataset built with header fields’ values of Portable Executable files: Github. Retrieved From https://github.com/urwithajit9/ClaMP

3. Alkasassbeh, M., & Al-Daleen, S. (2018). Classification of malware based on file content and characteristics. Retrieved from https://www.researchgate.net/publication/328352561_Classification_of_malware_based_on_file_content_and_characteristics

4. A Comparative Study of Virus Detection Techniques.;S. A.Amro;International Journal of Computer and Information Engineering.,2016

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