DocumentCode
3724538
Title
Weighting technique on multi-timeline for machine learning-based anomaly detection system
Author
Kriangkrai Limthong;Kensuke Fukuda;Yusheng Ji;Shigeki Yamada
Author_Institution
Computer Engineering Department, Bangkok University, Prathumthani 12120 Thailand
fYear
2015
Firstpage
1
Lastpage
6
Abstract
Anomaly detection is one of the crucial issues of network security. Many techniques have been developed for certain application domains, and recent studies show that machine learning technique contains several advantages to detect anomalies in network traffic. One of the issues applying this technique to real network is to understand how the learning algorithm contains more bias on new traffic than old traffic. In this paper, we investigate the dependency of the time period for learning on the performance of anomaly detection in Internet traffic. For this, we introduce a weighting technique that controls influence of recent and past traffic data in an anomaly detection system. Experimental results show that the weighting technique improves detection performance between 2.7-112% for several learning algorithms, such as multivariate normal distribution, knearest neighbor, and one-class support vector machine.
Keywords
"Routing protocols","Throughput","Vehicular ad hoc networks","Delays","Routing"
Publisher
ieee
Conference_Titel
Computing, Communication and Security (ICCCS), 2015 International Conference on
Type
conf
DOI
10.1109/CCCS.2015.7374168
Filename
7374168
Link To Document