A Method of Mining the Meta-association Rules for Dynamic Association Rule Based on the Model of AR-Markov | IEEE Conference Publication | IEEE Xplore

A Method of Mining the Meta-association Rules for Dynamic Association Rule Based on the Model of AR-Markov


Abstract:

Based on the dynamic association rules, this paper puts forward the formal definition of meta-rules which makes use of the support vector and confidence vector as evaluat...Show More

Abstract:

Based on the dynamic association rules, this paper puts forward the formal definition of meta-rules which makes use of the support vector and confidence vector as evaluation of rules, and introduces the usual mining process of the Meta-association Rules for dynamic association rule by the model of AR-Markov, the examples show that this method is effective in the analysing and predicting the change tendency of Meta-association Rules' support value and confidence value.
Date of Conference: 24-25 April 2010
Date Added to IEEE Xplore: 07 June 2010
ISBN Information:
Conference Location: Wuhan, China
References is not available for this document.

I. Introduction

Association rule is an important research in data mining and was first introduced by Agarwal and other researchers. This rule is used to find the relationships between items of the transaction data sets in order to provide reference for decision-making. The traditional algorithms of association rules consider that rules in the database is permanently effective. However, because the transaction data sets usually have the time characteristics, the rules change greatly with time. To set up a Meta-association rule for the rule is more intuitive to describe the tendency of rule changes and is better for decision-making. In order to describe the regularities of changes over time in association rules, Liu preliminarily introduced the new technology of dynamic association rules in reference [1]. This article, which is based on the fact that rules change with time, introduces the definition of Meta-rules of dynamic association rule, and uses integrated method such as AR-Markov models to mine the Meta-rules of dynamic association rule.

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1.
LIU Jinfeng and Gang Rong, "Mining Dynamic Association Rules in Databases", Proc.of international Conf. on Computational Intelligence and Security(CIS`05), pp. 668-695, 2005.
2.
Jiawei Han and Micheline Kamber, "Data Mining: Concepts and Techniques[M]" in , Beijing:China Machine Press, pp. 147-183, 2007.
3.
XIANG Jingtian, SHI Jiuyan and ZHOU Qinfang, "Dynamic Data Processing: Time Series Analysis [M]" in , Beijing:China Meteorological Press, pp. 1-433, 1991.
4.
AN Hongzhi, "Time Series Analysis [M]" in , Beijing:China science Press, pp. 1-344, 1992.
5.
OUYANG Weimin, ZHENG Cheng and CAI Qingsheng, "Weighted Association Rules Discovery in Database [J]", Chinese Journal of Software, vol. 12, no. 4, pp. 614-619, 2001.
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Wai-Ho Au and Keith C.C. Chan, "Mining changes in association rules: a fuzzy approach [J]", Fuzzy sets and systems, vol. 149, pp. 87-104, 2005.
7.
LIU Jun, Ho Yanfeng and ZHANG Zhonglin, "Research of Mining the Meta-association Rules for Dynamic Association Rule Based on the Model of Grey-markov [J]", Chinese Computer Applications, vol. 28, no. 9, pp. 2353-2356, 2008.
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References

References is not available for this document.