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Classification Based Network Layer Botnet Detection

  • Shivangi GargEmail author
  • R. M. Sharma
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 712)

Abstract

Botnets has emerged as the capacious cyber security menace that is encountered by the institutions as well as population around the terrene. It has matured into becoming the primal carrier for launching the most serious menace such as DDOS attacks, spreading of spams, stealing of user’s sensitive information (Banking info, credit card info etc.) and more. Generally, the community of common users are unaware of security standards that make them even more susceptible to bot attacks. A sententious amount of research for botnet detection and analysis has been done but significant amount of work has not been done in terms of contributing a community herded tool for bots. We propose an idea to perform filtration and classification on data received by Botflex that can help to reduce processing overhead and throughput of IDS will be improved. Botflex have limited set of detection parameters which are extended in our proposed approach.

Keywords

Botnet Network layer Filtration Classification Behaviour based IDS 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2017

Authors and Affiliations

  1. 1.Department of Computer EngineeringNational Institute of TechnologyKurukshetraIndia

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