articleIEEE Transactions on Network and Service ManagementFeb 12, 2019Closed access

Mobile Encrypted Traffic Classification Using Deep Learning: Experimental Evaluation, Lessons Learned, and Challenges

University of Naples Federico II

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Abstract

The massive adoption of hand-held devices has led to the explosion of mobile traffic volumes traversing home and enterprise networks, as well as the Internet. Traffic classification (TC), i.e., the set of procedures for inferring (mobile) applications generating such traffic, has become nowadays the enabler for highly valuable profiling information (with certain privacy downsides), other than being the workhorse for service differentiation/blocking. Nonetheless, the design of accurate classifiers is exacerbated by the raising adoption of encrypted protocols (such as TLS), hindering the suitability of (effective) deep packet inspection approaches. Also, the fast-expanding set of apps and the moving-target…

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494
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45.41
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100%
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Authors

4

Topics & keywords

Keywords
  • Computer science
  • Deep packet inspection
  • Profiling (computer programming)
  • Encryption
  • Traffic classification
  • Deep learning
  • Machine learning
  • Artificial intelligence
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