학술논문

Extracting Rules from Optimal Clusters of Self-Organizing Maps
Document Type
Conference
Source
2010 Second International Conference on Computer Modeling and Simulation Computer Modeling and Simulation, 2010. ICCMS '10. Second International Conference on. 1:382-386 Jan, 2010
Subject
Computing and Processing
Self organizing feature maps
Data mining
Particle swarm optimization
Artificial neural networks
Information management
Biological system modeling
Humans
Computer networks
Computational modeling
Computer simulation
rule extraction
data mining
knowledge discovery
particle swarm optimization
self-organizing map
Language
Abstract
Self-organizing map (SOM) neural networks have been successfully applied to solve classification and clustering problems. However, while most SOM models pursue their results as accurately as possible, they ignore the importance of understanding and explanation. This paper first finds the optimal solution for the number of SOM clusters by using the technique of particle swarm optimization (PSO) and then generates clustering rules by extracting implicit knowledge from a one-dimensional SOM neural architecture. The experimental results show that rules extracted by our method produce an improvement in performance compared with other rule extraction models. Our proposed approach is able to equip the self-organizing map with an explanatory capability through the use of rules.