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Mining Associations Using Directed Hypergraphs

Data Engineering Workshops(2012)

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Abstract
We introduce the notion of association rules for multi-valued attributes, which is an adaptation of the definition of quantitative association rules known in the literature. The association rules for multi-valued attributes are integrated in building a novel directed hypergraph based model for databases that allows to capture attribute-level associations and their strength. Basing on this model, we provide association-based similarity notions between any two attributes and present a method for finding clusters of similar attributes. We then propose an algorithm to identify a subset of attributes known as a leading indicator that influences the values of almost all other attributes. Finally, we present an association-based classifier that can be used to predict values of attributes. We demonstrate the effectiveness of our proposed model through experiments on a financial timeseries data set (S&P 500).
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Key words
financial timeseries data,association-based similarity notion,association-based classifier,directed hypergraphs,leading indicator,attribute-level association,quantitative association rule,association rule,multi-valued attribute,similar attribute,databases,association rules,algorithm design and analysis,predictive models,similarity,clustering algorithms,discretization,data mining,data models,directed graphs,clustering
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