An Intrusion Detection System (IDS) is a program that
analyses what happens or has happened during an
execution and tries to find indications that the
computer has been misused. A Distributed IDS (DIDS)
consists of several IDS over a large network (s), all
of which communicate with each other, or with a central
server that facilitates advanced network monitoring. In
a distributed environment, DIDS are implemented using
co-operative intelligent agents distributed across the
network(s). This paper evaluates three fuzzy rule-based
classifiers to detect intrusions in a network. Results
are then compared with other machine learning
techniques like decision trees, support vector machines
and linear genetic programming. Further, we modelled
Distributed Soft Computing-based IDS (D-SCIDS) as a
combination of different classifiers to model
lightweight and more accurate (heavy weight) IDS.
Empirical results clearly show that soft computing
approach could play a major role for intrusion
detection.
%0 Journal Article
%1 Abraham:2007:JNCS
%A Abraham, Ajith
%A Jain, Ravi
%A Thomas, Johnson
%A Hana, Sang Yong
%D 2007
%J Journal of Network and Computer Applications
%K algorithms, genetic programming
%N 1
%P 81--98
%R doi:10.1016/j.jnca.2005.06.001
%T D-SCIDS: Distributed soft computing intrusion
detection system
%V 30
%X An Intrusion Detection System (IDS) is a program that
analyses what happens or has happened during an
execution and tries to find indications that the
computer has been misused. A Distributed IDS (DIDS)
consists of several IDS over a large network (s), all
of which communicate with each other, or with a central
server that facilitates advanced network monitoring. In
a distributed environment, DIDS are implemented using
co-operative intelligent agents distributed across the
network(s). This paper evaluates three fuzzy rule-based
classifiers to detect intrusions in a network. Results
are then compared with other machine learning
techniques like decision trees, support vector machines
and linear genetic programming. Further, we modelled
Distributed Soft Computing-based IDS (D-SCIDS) as a
combination of different classifiers to model
lightweight and more accurate (heavy weight) IDS.
Empirical results clearly show that soft computing
approach could play a major role for intrusion
detection.
@article{Abraham:2007:JNCS,
abstract = {An Intrusion Detection System (IDS) is a program that
analyses what happens or has happened during an
execution and tries to find indications that the
computer has been misused. A Distributed IDS (DIDS)
consists of several IDS over a large network (s), all
of which communicate with each other, or with a central
server that facilitates advanced network monitoring. In
a distributed environment, DIDS are implemented using
co-operative intelligent agents distributed across the
network(s). This paper evaluates three fuzzy rule-based
classifiers to detect intrusions in a network. Results
are then compared with other machine learning
techniques like decision trees, support vector machines
and linear genetic programming. Further, we modelled
Distributed Soft Computing-based IDS (D-SCIDS) as a
combination of different classifiers to model
lightweight and more accurate (heavy weight) IDS.
Empirical results clearly show that soft computing
approach could play a major role for intrusion
detection.},
added-at = {2008-06-19T17:35:00.000+0200},
author = {Abraham, Ajith and Jain, Ravi and Thomas, Johnson and Hana, Sang Yong},
biburl = {https://www.bibsonomy.org/bibtex/24f4921d97e062cec8c64b14a733020aa/brazovayeye},
doi = {doi:10.1016/j.jnca.2005.06.001},
interhash = {6de869a153a8b4d15aaee83013303305},
intrahash = {4f4921d97e062cec8c64b14a733020aa},
journal = {Journal of Network and Computer Applications},
keywords = {algorithms, genetic programming},
month = {January},
number = 1,
pages = {81--98},
timestamp = {2008-06-19T17:35:12.000+0200},
title = {{D}-{SCIDS}: Distributed soft computing intrusion
detection system},
volume = 30,
year = 2007
}