Title :
Evaluating the performance of a differential evolution algorithm in anomaly detection
Author :
Elsayed, Saber ; Sarker, Ruhul ; Slay, Jill
Author_Institution :
Australian Centre for Cyber Security, School of Engineering and Information technology, University of New South Wales at Canberra, Australia
Abstract :
During the last few eras, evolutionary algorithms have been adopted to tackle cyber-terrorism. Among them, genetic algorithms and genetic programming were popular choices. Recently, it has been shown that differential evolution was more successful in solving a wide range of optimization problems. However, a very limited number of research studies have been conducted for intrusion detection using differential evolution. In this paper, we will adapt differential evolution algorithm for anomaly detection, along with proposing a new fitness function to measure the quality of each individual in the population. The proposed method is trained and tested on the 10%KDD99 cup data and compared against existing methodologies. The results show the effectiveness of using differential evolution in detecting anomalies by achieving an average true positive rate of 100%, while the average false positive rate is only 0.582%.
Keywords :
Artificial neural networks; Feature extraction; Indexes; Intrusion detection; Sociology; Statistics; Testing; anomaly detection; differential evolution; intrusion detection systems;
Conference_Titel :
Evolutionary Computation (CEC), 2015 IEEE Congress on
Conference_Location :
Sendai, Japan
DOI :
10.1109/CEC.2015.7257194