In recent years, the increasing diffusion of malicious software has encouraged the adoption of advanced machine learning algorithms to timely detect new threats. A cloud-based approach allows to exploit the big data produced by client agents to train such algorithms, but on the other hand, poses severe challenges on their scalability and performance. We propose a hybrid cloud-based malware detection system in which static and dynamic analyses are combined in order to find a good trade-off between response time and detection accuracy. Our system performs a continuous learning process of its models, based on deep networks, by exploiting the growing amount of data provided by clients. The preliminary experimental evaluation confirms the suitability of the approach proposed here.
De Paola, A., Gaglio, S., Lo Re, G., Morana, M. (2018). A hybrid system for malware detection on big data. In INFOCOM 2018 - IEEE Conference on Computer Communications Workshops (pp. 45-50). Institute of Electrical and Electronics Engineers Inc. [10.1109/INFCOMW.2018.8406963].
A hybrid system for malware detection on big data
De Paola, Alessandra;Gaglio, Salvatore;Lo Re, Giuseppe;Morana, Marco
2018-01-01
Abstract
In recent years, the increasing diffusion of malicious software has encouraged the adoption of advanced machine learning algorithms to timely detect new threats. A cloud-based approach allows to exploit the big data produced by client agents to train such algorithms, but on the other hand, poses severe challenges on their scalability and performance. We propose a hybrid cloud-based malware detection system in which static and dynamic analyses are combined in order to find a good trade-off between response time and detection accuracy. Our system performs a continuous learning process of its models, based on deep networks, by exploiting the growing amount of data provided by clients. The preliminary experimental evaluation confirms the suitability of the approach proposed here.File | Dimensione | Formato | |
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