STUDY OF FUZZY METHODS IN DATA MINING

Chirag I. jagani, Dr. Kishor H. Atkotiya

Abstract


Data mining is the analysis of (often large) observational data sets to find unsuspected relationships and to summarize the data in novel ways that are both understandable and useful to the data owner” [2]. This is to eliminate the randomness and discover the hidden pattern. As these data processing methods are nearly always computationally intensive. We use data mining tools, methodologies, and theories for revealing patterns in data [1]. Fuzzy logic has been applied to various fields, from control theory to AI. It is designed to allow the computer to determine the distinctions among data which is neither true nor false. In this paper our aim to provide how fuzzy logic and fuzzy set can be used in data mining instead of classical crisp theory. 

Keywords


Data Mining, Fuzzy Logic, Fuzzy System, Fuzzy Rule, Fuzzy Set

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References


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