Journal on Communications

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App-DDoS detection method based on K-means multiple principal component analysis

  

  • Online:2014-05-25 Published:2014-05-15

Abstract: Aiming at the application layer distributed deny of service(App-DDoS) attacks, a K-means multiple principal component analysis algorithm(KMPCAA) utilizing the Web log mining was proposed, then an App-DDoS detection method based on KMPCAA was presented. Firstly, a statistical properties feature extracting method was designed by analyzing the difference between normal users’ and attackers’ access behavior. Secondly, a k-means multiple principal component analysis algorithm was proposed by using the maximum distance classification method according to the data dimension reduction property of the principal component analysis, and then the testing model based on the algorithm was established. Finally, an App-DDoS attack detection experiment on the CTI-DATA dataset and the simulated attack dataset was conducted. In this experiment, the proposed method was compared with the fuzzy synthetical evaluation (FSE) algorithm, the hidden semi-Markov model (HsMM) detection algorithm and the dempster-shafer evidence theory (D-S) algorithm. Experimental results demonstrate that the KMPCAA detection algorithm has better detection performance.

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