Title of article :
Exploring comprehensible classification rules from trained neural networks integrated with a time-varying binary particle swarm optimizer
Author/Authors :
?zbak?r، نويسنده , , Lale and Delice، نويسنده , , Y?lmaz، نويسنده ,
Abstract :
Purpose
ting comprehensible classification rules is the most emphasized concept in data mining researches. In order to obtain accurate and comprehensible classification rules from databases, a new approach is proposed by combining advantages of artificial neural networks (ANN) and swarm intelligence.
cial neural networks (ANNs) are a group of very powerful tools applied to prediction, classification and clustering in different domains. The main disadvantage of this general purpose tool is the difficulties in its interpretability and comprehensibility. In order to eliminate these disadvantages, a novel approach is developed to uncover and decode the information hidden in the black-box structure of ANNs. Therefore, in this paper a study on knowledge extraction from trained ANNs for classification problems is carried out. The proposed approach makes use of particle swarm optimization (PSO) algorithm to transform the behaviors of trained ANNs into accurate and comprehensible classification rules. Particle swarm optimization with time varying inertia weight and acceleration coefficients is designed to explore the best attribute-value combination via optimizing ANN output function.
s
ights hidden in trained ANNs turned into comprehensible classification rule set with higher testing accuracy rates compared to traditional rule based classifiers.
Keywords :
DATA MINING , Rule extraction , Classification , Artificial neural networks , particle swarm optimization
Journal title :
Astroparticle Physics