Visible to the public Malware Analysis using Machine Learning and Deep Learning techniques

TitleMalware Analysis using Machine Learning and Deep Learning techniques
Publication TypeConference Paper
Year of Publication2020
AuthorsPatil, Rajvardhan, Deng, Wei
Conference Name2020 SoutheastCon
KeywordsDeep Learning, feature extraction, Human Behavior, Inspection, machine learning, Malware, malware analysis, malware detection, Manuals, Neural networks, Predictive Metrics, privacy, pubcrawl, Resiliency
AbstractIn this era, where the volume and diversity of malware is rising exponentially, new techniques need to be employed for faster and accurate identification of the malwares. Manual heuristic inspection of malware analysis are neither effective in detecting new malware, nor efficient as they fail to keep up with the high spreading rate of malware. Machine learning approaches have therefore gained momentum. They have been used to automate static and dynamic analysis investigation where malware having similar behavior are clustered together, and based on the proximity unknown malwares get classified to their respective families. Although many such research efforts have been conducted where data-mining and machine-learning techniques have been applied, in this paper we show how the accuracy can further be improved using deep learning networks. As deep learning offers superior classification by constructing neural networks with a higher number of potentially diverse layers it leads to improvement in automatic detection and classification of the malware variants.In this research, we present a framework which extracts various feature-sets such as system calls, operational codes, sections, and byte codes from the malware files. In the experimental and result section, we compare the accuracy obtained from each of these features and demonstrate that feature vector for system calls yields the highest accuracy. The paper concludes by showing how deep learning approach performs better than the traditional shallow machine learning approaches.
DOI10.1109/SoutheastCon44009.2020.9368268
Citation Keypatil_malware_2020