Efficient Data Reduction with EASE

Written with Bin Chen, Manoranjan Dash, Peter Haas, and Peter Scheuerman.
Abstract: A variety of mining and analysis problems --- ranging from association-rule discovery to contingency table analysis to materialization of certain approximate datacubes --- involve the extraction of knowledge from a set of categorical count data. Such data can be viewed as a collection of ``transactions,'' where a transaction is a fixed-length vector of counts. Classical algorithms for solving count-data problems require one or more computationally intensive passes over the entire database and can be prohibitively slow. One effective method for dealing with this ever-worsening scalability problem is to run the algorithms on a small sample of the data. We present a new data-reduction algorithm, called EASE, for producing such a sample. Like the FAST algorithm introduced by Chen et al., EASE is especially designed for count data applications. Both EASE and FAST take a relatively large initial random sample and then deterministically produce a subsample whose ``distance'' --- appropriately defined --- from the complete database is minimal. Unlike FAST, which obtains the final subsample by quasi-greedy descent, EASE uses epsilon-approximation methods to obtain the final subsample by a process of repeated halving. Experiments both in the context of association rule mining and classical χ2 contingency-table analysis show that EASE outperforms both FAST and simple random sampling, sometimes dramatically.

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Copyright © 2002, 2003, Hervé Brönnimann, hbr@poly.edu
Last modified: July 7th, 2003