Title of article :
Inference System Modeling Using Hybrid Evolutionary Algorithm: Application to Breast Cancer Data Set
Author/Authors :
Einipour، Amin نويسنده Department Of Computer, Andimeshk Branch, Islamic Azad University, Andimeshk, Iran Einipour, Amin
Issue Information :
ماهنامه با شماره پیاپی سال 2013
Pages :
11
From page :
21
To page :
31
Abstract :
This paper addresses the well-known classification task of data mining, where the objective is to predict the class which an example belongs to. Discovered knowledge is expressed in the form of high-level, easy-to-interpret classification rules. In order to discover classification rules, we propose a hybrid meta-heuristic/fuzzy system. In this paper we use an Ant Colony Optimization method as meta-heuristic algorithm which extracts optimized fuzzy if-then rules for classification patterns. Fuzzy rules are desirable because of their interpretability by human experts. Ant colony algorithm is employed as evolutionary algorithm to optimize the obtained set of fuzzy rules. Results on breast cancer data set from UCI machine learning repository show that the proposed approach would be capable of classifying cancer patterns with high accuracy rate in addition to adequate interpretability of extracted rules.
Journal title :
International journal of Computer Science and Network Solutions(IJCSNS)
Serial Year :
2013
Journal title :
International journal of Computer Science and Network Solutions(IJCSNS)
Record number :
970790
Link To Document :
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