Abstract

In real-world applications, transactions are typically represented by quantitative data. Thus, fuzzy association rule mining algorithms have been proposed to handle these quantitative transactions. In addition, items generally have certain lifespans or temporal periods in which they exist in a database. Therefore, fuzzy temporal association rule mining algorithms have also been proposed in the literature. A key factor in the acquisition of fuzzy temporal association rules (FTARs) is the design of appropriate membership functions. Because current approaches have been designed to generate membership functions for mining fuzzy association rules (FARs) in market-basket analysis, in this paper, we propose a membership function tuning mechanism for a fuzzy temporal association rule mining algorithm. The proposed approach modifies an existing cluster-based method to generate unique membership functions that are specifically tailored to each item in a dataset. Two factors are utilized to decide the appropriate membership functions of each item: (1) the density similarity among intervals corresponding to the density similarity within intervals, and (2) the information closeness within an interval corresponding to the similarity in the number of data points between intervals. A parameter θ is used to indicate the relative importance of these two factors. As a result, the membership functions are generated based on the quantitative ranges of individual items, and the generated membership functions of items are different in terms of the values of each interval and the number of intervals. The generated membership functions are subsequently used in a fuzzy temporal association rule mining algorithm. Computational experiments were conducted on both a synthetic dataset and a real-world one to demonstrate the effectiveness of the proposed approach.

Highlights

  • Association rule mining is the process of extracting rules from a transaction dataset

  • To handle quantitative values in transactions, a fuzzy set is used to transform these varying quantity ranges into linguistic terms that can be understood by humans

  • The membership functions used in the previous approaches that might critically influence the final results are predefined

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Summary

INTRODUCTION

Association rule mining is the process of extracting rules from a transaction dataset. Defining an appropriate set of membership functions that can obtain useful rules is a challenging task To address this challenge, Chien et al proposed a granulation-based approach to derive item membership functions from quantitative transactions to mine FARs [6]. Algorithms that capitalize on evolutionary computation techniques to optimize membership functions for items have been proposed [8], [9], [20] These approaches are composed of two phases, i.e., membership function optimization and fuzzy association rule mining. We propose an approach to generate fuzzy temporal association rules using a membership function tuning mechanism.

RELATED WORK
PHASE I
PHASE II
EXPERIMENTAL RESULTS
CONCLUSIONS AND FUTURE WORK
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