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An Efficient Rigorous Approach for Identifying Statistically Significant Frequent Itemsets

Authors :
Kirsch, Adam
Mitzenmacher, Michael
Pietracaprina, Andrea
Pucci, Geppino
Upfal, Eli
Vandin, Fabio
Kirsch, Adam
Mitzenmacher, Michael
Pietracaprina, Andrea
Pucci, Geppino
Upfal, Eli
Vandin, Fabio
Publication Year :
2010

Abstract

As advances in technology allow for the collection, storage, and analysis of vast amounts of data, the task of screening and assessing the significance of discovered patterns is becoming a major challenge in data mining applications. In this work, we address significance in the context of frequent itemset mining. Specifically, we develop a novel methodology to identify a meaningful support threshold s* for a dataset, such that the number of itemsets with support at least s* represents a substantial deviation from what would be expected in a random dataset with the same number of transactions and the same individual item frequencies. These itemsets can then be flagged as statistically significant with a small false discovery rate. We present extensive experimental results to substantiate the effectiveness of our methodology.<br />Comment: A preliminary version of this work was presented in ACM PODS 2009. 20 pages, 0 figures

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn691094338
Document Type :
Electronic Resource