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MDiET: Malware Detection in Encrypted Traffic
Author(s) -
Dimitrios Schoinianakis,
Norbert Goetze,
Gerald Lehmann
Publication year - 2019
Publication title -
electronic workshops in computing
Language(s) - English
Resource type - Conference proceedings
ISSN - 1477-9358
DOI - 10.14236/ewic/icscsr19.4
Subject(s) - encryption , malware , computer science , signature (topology) , set (abstract data type) , computer security , digital signature , ransomware , data mining , artificial intelligence , machine learning , hash function , geometry , mathematics , programming language
With the increasing adoption of end-to-end encryption in industrial systems, the risk of distributing hidden malware by exploiting encrypted channels gradually turns to a major concern. Due to encryption, the stateof-the-art, signature-based mechanisms might fail to detect malware sufficiently, thus new approaches are required. In this work, a method for malware detection in encrypted traffic based on Machine Learning is presented. A supervised learning approach is adopted and the efficiency of the solution is demonstrated by a set of exhaustive simulations. Further considerations for incorporating the proposed method in a reference industrial network are also discussed.

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