MCRapper: Monte-Carlo Rademacher Averages for Poset Families and Approximate Pattern Mining
June 16, 2020 ยท Declared Dead ยท ๐ Knowledge Discovery and Data Mining
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Authors
Leonardo Pellegrina, Cyrus Cousins, Fabio Vandin, Matteo Riondato
arXiv ID
2006.09085
Category
cs.LG: Machine Learning
Cross-listed
cs.DB,
cs.DS,
stat.ML
Citations
24
Venue
Knowledge Discovery and Data Mining
Last Checked
4 months ago
Abstract
We present MCRapper, an algorithm for efficient computation of Monte-Carlo Empirical Rademacher Averages (MCERA) for families of functions exhibiting poset (e.g., lattice) structure, such as those that arise in many pattern mining tasks. The MCERA allows us to compute upper bounds to the maximum deviation of sample means from their expectations, thus it can be used to find both statistically-significant functions (i.e., patterns) when the available data is seen as a sample from an unknown distribution, and approximations of collections of high-expectation functions (e.g., frequent patterns) when the available data is a small sample from a large dataset. This feature is a strong improvement over previously proposed solutions that could only achieve one of the two. MCRapper uses upper bounds to the discrepancy of the functions to efficiently explore and prune the search space, a technique borrowed from pattern mining itself. To show the practical use of MCRapper, we employ it to develop an algorithm TFP-R for the task of True Frequent Pattern (TFP) mining. TFP-R gives guarantees on the probability of including any false positives (precision) and exhibits higher statistical power (recall) than existing methods offering the same guarantees. We evaluate MCRapper and TFP-R and show that they outperform the state-of-the-art for their respective tasks.
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