Temporal Analysis Of Intrusion Detection
Security Technology (ICCST), 2014 International Carnahan Conference on • 2014
Publication Information
Authors
Mofreh A. Hogo
Keywords
Bayesian Network Classifier
Data Mining
Latest Snapshot
Temporal Intrusion Detection
Time Slice
Journal
Security Technology (ICCST), 2014 International Carnahan Conference on
Publisher
IEEE
Volume
Not Available
Issue
Not Available
Pages
1 - 6
publication.type
International
Paper Link
Open Link
Supplementary Materials
Not Available
Abstract
Intrusion detection system (IDS) is becoming an integral part of the network security infrastructure. Data mining tools are widely used for developing IDS. There is a lack of researches in the temporal data mining analysis of the intrusions (intrusions detection over different time periods). Most of researches are focusing on the latest snapshot data mining of intrusion detection systems. This work presented in this paper proposes a new temporal data mining analysis technique of intrusion detection systems based on naïve Bayes networks. The presented system considered the time dimension and built many different classifier models to obtain an accurate analysis of intruders. The obtained results give more focusing and deep understanding of the intruders' behavior during the different time periods and illustrate the shrinking and expansions of intruders' classes over the time slices (the migrations of intruders from one segment to another), The temporal analysis of intruders can help in taking an appropriate decision against specific type of attacks (decisions must be suitable with the intruder behaviour). The results indicate the reduction of the possible high positive false rate.
Staff Members - Benha University