Title
Intrusion detection based on clustering organizational co-evolutionary classification
Abstract
Organizational Co-Evolutionary Classification (OCEC) is a novel classification algorithm, based on co-evolutionary computation. Differing from Genetic Algorithm, OCEC can work without encoding datasets because introducing “organization” concept. To deal with mass data in intrusion detection effectively, we develop a new algorithm, Clustering Organizational Co-Evolutionary Classification (COCEC) by introducing the clustering method to OCEC. COCEC divides initial data into many sections, and each section is considered as an organization, thus COCEC allows more data to obtain evolutionary learning, so the rule set worked out by COCEC contains fewer rules. In addition to improvement of the initial state in OCEC, some improvements have also been done in the choice strategy of the operators and the rule matching method The experiment results show that COCEC is more accurate and more effective than OCEC and OCEFC (Organizational Co-Evolutionary Fuzzy Classification) with the KDD CUP 99 database, and it greatly reduces the number of rules and testing time.
Year
DOI
Venue
2006
10.1007/11881599_139
FSKD
Keywords
Field
DocType
novel classification algorithm,organizational co-evolutionary fuzzy classification,mass data,initial data,organizational co-evolutionary classification,fewer rule,initial state,clustering method,new algorithm,clustering organizational co-evolutionary classification,intrusion detection,genetic algorithm,evolutionary computing,fuzzy classification
Data mining,Evolutionary algorithm,Fuzzy classification,Computer science,Fuzzy logic,Knowledge extraction,Artificial intelligence,Cluster analysis,Intrusion detection system,Genetic algorithm,Machine learning,Learning classifier system
Conference
Volume
ISSN
ISBN
4223
0302-9743
3-540-45916-2
Citations 
PageRank 
References 
1
0.35
9
Authors
2
Name
Order
Citations
PageRank
Fang Liu1927.30
Yun Tian210.35