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Literature Survey on Genetic Algorithm Approach for Fuzzy Rule-Based System


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1 Sinhgad College of Engineering, Pune-41, Maharashtra, India
 

Fuzzy-Rule Based Clustering (FRBC) is proposed, for automatically exploring potential clusters in dataset. This uses supervised classification approach to achieve the unsupervised cluster analysis. Fusion of clustering and fuzzy set theory is nothing but fuzzy clustering, which is appropriate to handle problems with imprecise boundaries of clusters. A fuzzy rule-based classification system is a special case of fuzzy modeling, in which the output of system is crisp and discrete. Fuzzy modeling provides high interpretability and allows working with imprecise data. To explore the clusters in the data patterns, FRBC appends some randomly generated auxiliary patterns to the problem space. It then uses the main data as one class and the auxiliary data as another class to enumerate the unsupervised clustering problem as a supervised classification one.
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  • Literature Survey on Genetic Algorithm Approach for Fuzzy Rule-Based System

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Authors

Dinesh P. Pitambare
Sinhgad College of Engineering, Pune-41, Maharashtra, India
Pravin M. Kamde
Sinhgad College of Engineering, Pune-41, Maharashtra, India

Abstract


Fuzzy-Rule Based Clustering (FRBC) is proposed, for automatically exploring potential clusters in dataset. This uses supervised classification approach to achieve the unsupervised cluster analysis. Fusion of clustering and fuzzy set theory is nothing but fuzzy clustering, which is appropriate to handle problems with imprecise boundaries of clusters. A fuzzy rule-based classification system is a special case of fuzzy modeling, in which the output of system is crisp and discrete. Fuzzy modeling provides high interpretability and allows working with imprecise data. To explore the clusters in the data patterns, FRBC appends some randomly generated auxiliary patterns to the problem space. It then uses the main data as one class and the auxiliary data as another class to enumerate the unsupervised clustering problem as a supervised classification one.