Article ID Journal Published Year Pages File Type
494765 Applied Soft Computing 2016 10 Pages PDF
Abstract

•In this paper, we propose an algorithm named dFIN for frequent itemset mining.•dFIN achieves high performance by employing DiffNodesets to represent itemsets.•Experiment results on real datasets show that dFIN is effective and outperforms state-of-the-art algorithms.

Mining frequent itemsets is an essential problem in data mining and plays an important role in many data mining applications. In recent years, some itemset representations based on node sets have been proposed, which have shown to be very efficient for mining frequent itemsets. In this paper, we propose DiffNodeset, a novel and more efficient itemset representation, for mining frequent itemsets. Based on the DiffNodeset structure, we present an efficient algorithm, named dFIN, to mining frequent itemsets. To achieve high efficiency, dFIN finds frequent itemsets using a set-enumeration tree with a hybrid search strategy and directly enumerates frequent itemsets without candidate generation under some case. For evaluating the performance of dFIN, we have conduct extensive experiments to compare it against with existing leading algorithms on a variety of real and synthetic datasets. The experimental results show that dFIN is significantly faster than these leading algorithms.

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Physical Sciences and Engineering Computer Science Computer Science Applications
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