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LSH methods for data deduplication in a Wikipedia artificial dataset

10 December 2021
Juan Ciro
Daniel Galvez
Tim Schlippe
David Kanter
ArXiv (abs)PDFHTML
Abstract

This paper illustrates locality sensitive hasing (LSH) models for the identification and removal of nearly redundant data in a text dataset. To evaluate the different models, we create an artificial dataset for data deduplication using English Wikipedia articles. Area-Under-Curve (AUC) over 0.9 were observed for most models, with the best model reaching 0.96. Deduplication enables more effective model training by preventing the model from learning a distribution that differs from the real one as a result of the repeated data.

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