Malware Detection using Machine Learning and Deep Learning
April 04, 2019 Β· Declared Dead Β· π JournΓ©es Bases de DonnΓ©es AvancΓ©es
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Authors
Hemant Rathore, Swati Agarwal, Sanjay K. Sahay, Mohit Sewak
arXiv ID
1904.02441
Category
cs.CR: Cryptography & Security
Cross-listed
cs.LG
Citations
109
Venue
JournΓ©es Bases de DonnΓ©es AvancΓ©es
Last Checked
3 months ago
Abstract
Research shows that over the last decade, malware has been growing exponentially, causing substantial financial losses to various organizations. Different anti-malware companies have been proposing solutions to defend attacks from these malware. The velocity, volume, and the complexity of malware are posing new challenges to the anti-malware community. Current state-of-the-art research shows that recently, researchers and anti-virus organizations started applying machine learning and deep learning methods for malware analysis and detection. We have used opcode frequency as a feature vector and applied unsupervised learning in addition to supervised learning for malware classification. The focus of this tutorial is to present our work on detecting malware with 1) various machine learning algorithms and 2) deep learning models. Our results show that the Random Forest outperforms Deep Neural Network with opcode frequency as a feature. Also in feature reduction, Deep Auto-Encoders are overkill for the dataset, and elementary function like Variance Threshold perform better than others. In addition to the proposed methodologies, we will also discuss the additional issues and the unique challenges in the domain, open research problems, limitations, and future directions.
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