MAFIA: a maximal frequent itemset algorithm

IEEE Transactions on Knowledge and Data Engineering(2005)

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摘要
We present a new algorithm for mining maximal frequent itemsets from a transactional database. The search strategy of the algorithm integrates a depth-first traversal of the itemset lattice with effective pruning mechanisms that significantly improve mining performance. Our implementation for support counting combines a vertical bitmap representation of the data with an efficient bitmap compression scheme. In a thorough experimental analysis, we isolate the effects of individual components of MAFIA including search space pruning techniques and adaptive compression. We also compare our performance with previous work by running tests on very different types of data sets. Our experiments show that MAFIA performs best when mining long itemsets and outperforms other algorithms on dense data by a factor of three to 30.
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关键词
data compression,data mining,transaction processing,tree searching,very large databases,MAFIA,adaptive compression,depth-first traversal,itemset mining,maximal frequent itemset algorithm,search space pruning technique,search strategy,transactional database,vertical bitmap representation,Index Terms- Itemset mining,maximal itemsets,transactional databases.
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