Abstract:
The extent to which malware camouflages has begged the attention of a wide range of researchers all over the world to direct their attention to developing effective detec...Show MoreMetadata
Abstract:
The extent to which malware camouflages has begged the attention of a wide range of researchers all over the world to direct their attention to developing effective detection methods for the same. Current antiviral techniques, which are hash-based and heuristic-driven, do not appear to handle the problem efficiently or effectively. The remarkable success of machine learning in tackling this challenge has increased its usage in developing these detection systems. In this paper, we examine such approaches in order to assess the accuracy of ML-based methods, particularly in a supervised learning scenario, and to provide the reader with a systematization of knowledge on the current state of the field. In this paper, three different methods were proposed based on machine learning models to detect malicious programs, and we evaluated them to show their efficacy and efficiency.
Published in: 2022 International Conference on Computational Intelligence and Sustainable Engineering Solutions (CISES)
Date of Conference: 20-21 May 2022
Date Added to IEEE Xplore: 11 August 2022
ISBN Information: