Sciweavers

SPIRE
2010
Springer

Fingerprinting Ratings for Collaborative Filtering - Theoretical and Empirical Analysis

13 years 9 months ago
Fingerprinting Ratings for Collaborative Filtering - Theoretical and Empirical Analysis
Abstract. We consider fingerprinting methods for collaborative filtering (CF) systems. In general, CF systems show their real strength when supplied with enormous data sets. Earlier work already suggests sketching techniques to handle massive amounts of information, but most prior analysis has so far been limited to non-ranking application scenarios and has focused mainly on a theoretical analysis. We demonstrate how to use fingerprinting methods to compute a family of rank correlation coefficients. Our methods allow identifying users who have similar rankings over a certain set of items, a problem that lies at the heart of CF applications. We show that our method allows approximating rank correlations with high accuracy and confidence. We examine the suggested methods empirically through a recommender system for the Netflix dataset, showing that the required fingerprint sizes are even smaller than the theoretical analysis suggests. We also explore the of use standard hash funct...
Yoram Bachrach, Ralf Herbrich
Added 30 Jan 2011
Updated 30 Jan 2011
Type Journal
Year 2010
Where SPIRE
Authors Yoram Bachrach, Ralf Herbrich
Comments (0)