Themis: Data Driven Approach to Botnet Detection

Themis: Data Driven Approach to Botnet Detection

Abstract

The detection of hosts infected with botnet malware in a timely manner is an important task, since botnets are responsible for many recent security incidents. We propose Themis, an approach based on inferring the structure of time varying IPto-IP communication with the Stochastic Block Model (SBM). Themis use the inferred structure to detect and quantify abnormal behavior of individual hosts. The novelty of our approach is the use of probabilistic inference directly on host interactions to model normality. The challenges of our approach are adapting the inference process to obtain a usable output in a dynamic system, and to specify abnormal behavior with respect to the inferred structure. Themis is able to distinguish between infected and benign hosts with accuracy larger 95 % and compares favorably against state of the art botnet detection mechanisms [1].

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Authors
  • Kalmbach, Patrick
  • Blenk, Andreas
  • Kellerer, Wolfgang
  • Schmid, Stefan
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Supplemental Material
Shortfacts
Category
Paper in Conference Proceedings or in Workshop Proceedings (Other)
Event Title
37th IEEE Conference on Computer Communications (INFOCOM)
Divisions
Communication Technologies
Subjects
Informatik Allgemeines
Event Location
Honolulu, Hawaii, USA
Event Type
Conference
Event Dates
April 2018
Date
2018
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