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Effective behavior signature extraction method using sequence pattern algorithm for traffic identification

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  • Kyu‐Seok Shim
  • Sung‐Ho Yoon
  • Baraka D. Sija
  • Jun‐Sang Park
  • Kyunghee Cho
  • Myung‐Sup Kim

Abstract

With the rapid development of the internet and a vigorous emergence of new applications, traffic identification has become a key issue. Although various methods have been proposed, there are still several limitations to achieving fine‐grained and application‐level identification. Therefore, we previously proposed a behavior signature model for extracting a unique traffic pattern of an application. Although this signature model achieves a good identification performance, it has trouble with the signature extraction, particularly from a huge amount of input traffic, because a Candidate‐Selection method is used for extracting the signature. To improve this inefficiency in the extraction process, in this paper, we propose a novel behavior signature extraction method using a sequence pattern algorithm. The proposed method can extract a signature regardless of the volume of input traffic because it excludes certain unsatisfactory candidates using a predefined support value during the early stage of the process. We proved experimentally the feasibility of the proposed extraction method for 7 popular applications.

Suggested Citation

  • Kyu‐Seok Shim & Sung‐Ho Yoon & Baraka D. Sija & Jun‐Sang Park & Kyunghee Cho & Myung‐Sup Kim, 2018. "Effective behavior signature extraction method using sequence pattern algorithm for traffic identification," International Journal of Network Management, John Wiley & Sons, vol. 28(2), March.
  • Handle: RePEc:wly:intnem:v:28:y:2018:i:2:n:e2011
    DOI: 10.1002/nem.2011
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