[PDF][PDF] Mining multi level association rules using fuzzy logic

U Rani, RV Prakash, DA Govardhan - International journal of emerging …, 2013 - Citeseer
International journal of emerging technology and advanced engineering, 2013Citeseer
Extracting multilevel association rules in transaction databases is most commonly used
tasks in data mining. This paper proposes a multilevel association rule mining using fuzzy
concepts. This paper uses different fuzzy membership function to retrieve efficient
association rules from multi level hierarchies that exist in a transaction dataset. In general,
the data can spread into many hierarchies or levels. From such datasets retrieving the
association rules is a tedious task. For this reason, in this paper we used the fuzzy-set …
Abstract
Extracting multilevel association rules in transaction databases is most commonly used tasks in data mining. This paper proposes a multilevel association rule mining using fuzzy concepts. This paper uses different fuzzy membership function to retrieve efficient association rules from multi level hierarchies that exist in a transaction dataset. In general, the data can spread into many hierarchies or levels. From such datasets retrieving the association rules is a tedious task. For this reason, in this paper we used the fuzzy-set concepts to retrieve multilevel association rules. This approach adopts a top-down progress and also incorporates fuzzy boundaries instead of sharp boundary intervals to derive large itemsets.
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