MAFIA: a maximal frequent itemset algorithm for transactional databases

Heidelberg(2001)

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摘要
Abstract: We present a new algorithm for mining maximal frequent itemsets from a transactional database. Our algorithm is especially efficient when the itemsets in the database are very long. The search strategy of our algorithm integrates a depth-first traversal of the itemset lattice with effective pruning mechanisms. Our implementation of the search strategy combines a vertical bitmap representation of the database with an efficient relative bitmap compression schema. In thorough experimental analysis of our algorithm on real data, we isolate the effect of the individual components of the algorithm. Our performance numbers show that our algorithm outperforms previous work by a factor of three to five.
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关键词
data compression,data mining,database theory,transaction processing,tree searching,mafia,depth-first traversal,experimental analysis,itemset lattice,maximal frequent itemset algorithm,maximal frequent itemset mining,pruning mechanisms,relative bitmap compression schema,search strategy,transactional database,transactional databases,vertical bitmap representation,association rule,database
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