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Generic attributes for Skype identification using machine learning

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posted on 2024-07-11, 16:05 authored by Rozanna Nadeera Jesudasan, Philip BranchPhilip Branch, Jason ButJason But
Identification of Skype traffic using machine learning is an area of current research interest. Previous Skype classifiers have usually been reliant on version specific features. Consequently, a classifier that works for a specific version of Skype is unlikely to work for successive versions. Classification of Skype has been successful with previous research showing 98% precision for Skype version 3. But classification using Skype version 3 attributes were not successful in identifying Skype version 4. In our experiments, we use machine learning to classify Skype version 3 and 4 for a subflow size of 100 with characteristics common to both versions. We discuss attributes that are generic to Skype and show that Skype can be identified with 97% precision and 86% recall.

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Parent title

Centre for Advanced Internet Architectures: technical reports

Article number

no. 100820A

Publisher

Swinburne University of Technology

Copyright statement

Copyright © 2010 The authors.

Language

eng

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