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Logical Itemset Mining
2012
2012 IEEE 12th International Conference on Data Mining Workshops
Frequent Itemset Mining (FISM) attempts to find large and frequent itemsets in bag-of-items data such as retail market baskets. Such data has two properties that are not naturally addressed by FISM: (i) a market basket might contain items from more than one customer intent (mixture property) and (ii) only a subset of items related to a customer intent are present in most market baskets (projection property). We propose a simple and robust framework called LOGICAL ITEMSET MINING (LISM) that
doi:10.1109/icdmw.2012.85
dblp:conf/icdm/KumarVJ12
fatcat:nr3dbiknuzgvnfxvpztqvsbjpu