Title :
The Evaluation of an Anomaly Detection System Based on Chi-square Method
Author :
Oshima, Shunsuke ; Nakashima, Takuo ; Sueyoshi, Toshinori
Author_Institution :
ICT Center for Learning Support, Nat. Coll. of Technol., Yatsushiro, Japan
Abstract :
The conventional methods using X2 value have been proposed to detect anomaly attacks. These systems, however, merely treat the one feature such as the source IP address or the destination port number as the probabilistic variable. The method based on multiple variables has not been proposed to aim to improve the accuracy of anomaly detection. In this paper, we propose the multiple features X2 method named the CSDM (Chi-square-based Space Division Method) to improve the detection accuracy. The F-measure values of CSDM and the conventional method are compared to evaluate these systems. We also focus on the learning mechanism and it´s affection for both systems. As the results of experiments using the source IP address, the destination port number, and the interval time deviation of arriving packets as the probabilistic variables, the proposed CSDM improves the F-measure compared to the conventional method meaning that the CSDM using multiple features can improve the F-measure over DoS/DDoS attacks and double attacks with 30$%$ attacking rate. In addition, the learning time of the 2 days in the CSDM system is enough to learn the behavior of normal condition and can reveal the quick learning performance with the high F-measures.
Keywords :
IP networks; computer network security; learning (artificial intelligence); probability; CSDM system; Chi-square-based space division method; DoS-DDoS attacking rate; F-measure value; X2 method; X2 value; anomaly attack detection system accuracy; destination port number; interval time deviation; learning mechanism; probabilistic variable; quick learning performance; source IP address; Accuracy; Computer crime; Equations; Feature extraction; IP networks; Mathematical model; Probabilistic logic; DoS/DDoS detection; chi-square value; learning time; statistical approach;
Conference_Titel :
Advanced Information Networking and Applications Workshops (WAINA), 2012 26th International Conference on
Conference_Location :
Fukuoka
Print_ISBN :
978-1-4673-0867-0
DOI :
10.1109/WAINA.2012.166