DocumentCode
2876244
Title
Network Anomaly Detection Using Random Forests and Entropy of Traffic Features
Author
Dong Yao ; Meijuan Yin ; Junyong Luo ; Silong Zhang
fYear
2012
fDate
2-4 Nov. 2012
Firstpage
926
Lastpage
929
Abstract
Tracking changes in traffic feature distributions and using it to classify traffic with different behavior is very important in the domain of network anomaly detection. Shannon entropy can be used to find changes in the normal distribution of network traffic to identify anomalies. Standardized entropy provides a measure of uniformity and randomicity on the same baseline for vectors or variables in the different sample space. Random Forests is a machine learning classification algorithm. It is best suited for the analysis of complex or distribution-imbalanced data structures embedded in small to moderate data sets. Anomaly traffic always occupied a little proportion of the whole network traffic. So we employed a combination of entropy measure and Random Forests classification to detect anomalies in network traffic. Our results demonstrate that the new technique is great promise in traffic anomaly detection.
Keywords
computer network security; entropy; learning (artificial intelligence); normal distribution; pattern classification; set theory; telecommunication traffic; vectors; Shannon entropy; anomaly identification; distribution-imbalanced data structures analysis; machine learning classification algorithm; network anomaly detection; normal distribution; random forest classification; randomicity measure; standardized entropy; traffic classification; traffic feature distribution; traffic feature entropy; uniformity measure; Classification algorithms; Entropy; Telecommunication traffic; Training; Vectors; Vegetation; Random Forests; anomaly detection; entropy;
fLanguage
English
Publisher
ieee
Conference_Titel
Multimedia Information Networking and Security (MINES), 2012 Fourth International Conference on
Conference_Location
Nanjing
Print_ISBN
978-1-4673-3093-0
Type
conf
DOI
10.1109/MINES.2012.146
Filename
6405837
Link To Document