journal article Dec 01, 2019

MIMETIC: Mobile encrypted traffic classification using multimodal deep learning

Computer Networks Vol. 165 pp. 106944 · Elsevier BV
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Cited By
256
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Metrics
256
Citations
36
References
Details
Published
Dec 01, 2019
Vol/Issue
165
Pages
106944
License
View
Funding
IEEE Foundation
Cite This Article
Giuseppe Aceto, Domenico Ciuonzo, Antonio Montieri, et al. (2019). MIMETIC: Mobile encrypted traffic classification using multimodal deep learning. Computer Networks, 165, 106944. https://doi.org/10.1016/j.comnet.2019.106944
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