Study on Multidimensional Negative Association Rules

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Abstract:

With the deepening of the negative association rules mining technology research, many key problems have been solved, but the solution of these problems are all on a single predicate in the transaction database. However, the data in the database often involves multiple predicates. This paper focuses on solving multi-dimensional support and confidence, negative association rules mining algorithm design problems. The experiment proves that the algorithm is correct and efficiency.

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1721-1724

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September 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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