Concise Representation of Multi-level Association Rules using MinMaxExact Rules

作者: Ssvn. Sarma , A. Govardhan , R. Vijaya Prakash

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摘要: Association Rule mining plays an important role in the discovery of knowledge and information. discovers huge number rules for any dataset different support confidence values, among this many them are redundant, especially case multi-level datasets. Mining non-redundant Rules is a big concern field Data mining. In paper, we present definition redundancy concise representation called Reliable Exact basis representing from The given loss less

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