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Algorithmic information theory / Minimum description length / Regular expression / Data mining / Apriori algorithm / Bioinformatics / Association rule learning
Date: 2011-05-19 07:17:24
Algorithmic information theory
Minimum description length
Regular expression
Data mining
Apriori algorithm
Bioinformatics
Association rule learning

Data Min Knowl Disc:169–214 DOIs10618x K RIMP: mining itemsets that compress Jilles Vreeken · Matthijs van Leeuwen · Arno Siebes

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