Abstract

Association rule mining and classification are two major task of data mining. They are attracted wide attention in both research and application area recently. I propose a method for classification rules from multi-label dataset using association rule analysis. Multi label dataset contains multiple class label attribute for predict target variable. We classify that attribute using different approaches like naviye-baies, decision tree, Back propagation, Neural based classification and association rule based classification. Finding association rule from dataset we have to apply various algorithms like Apriori, Fp-Growth, etc. I proposed Fp-Growth algorithm for finding association rule from dataset because of Fp-Growth is an improved algorithm of Apriori and Fp-Growth is more efficient than Apriori. The number of associations present in even moderate sized databases can be, however, very large - usually too large to be applied directly for classification purposes. Therefore, any classification learner using association rules has to perform three major steps: Mining a set of potentially accurate rules, evaluating and pruning rules, and classifying future instances using the found rule set. Implementation of improved Fp-Growth algorithm gives accurate and classify rule. This approach is more effective, accurate and efficient than other tradition algorithms.

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