CICLAD: A Fast and Memory-efficient Closed Itemset Miner for Streams

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Authors Tomas Martin, Guy Francoeur, Petko Valtchev arXiv ID 2007.01946 Category cs.DB: Databases Cross-listed cs.LG, stat.ML Citations 15 Venue Knowledge Discovery and Data Mining Last Checked 4 months ago
Abstract
Mining association rules from data streams is a challenging task due to the (typically) limited resources available vs. the large size of the result. Frequent closed itemsets (FCI) enable an efficient first step, yet current FCI stream miners are not optimal on resource consumption, e.g. they store a large number of extra itemsets at an additional cost. In a search for a better storage-efficiency trade-off, we designed Ciclad,an intersection-based sliding-window FCI miner. Leveraging in-depth insights into FCI evolution, it combines minimal storage with quick access. Experimental results indicate Ciclad's memory imprint is much lower and its performances globally better than competitor methods.
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