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Journal article

A hierarchical model for ordinal matrix factorization

From

Microsoft Research Cambridge1

University of Cambridge2

Cognitive Systems, Department of Informatics and Mathematical Modeling, Technical University of Denmark3

Department of Informatics and Mathematical Modeling, Technical University of Denmark4

This paper proposes a hierarchical probabilistic model for ordinal matrix factorization. Unlike previous approaches, we model the ordinal nature of the data and take a principled approach to incorporating priors for the hidden variables. Two algorithms are presented for inference, one based on Gibbs sampling and one based on variational Bayes.

Importantly, these algorithms may be implemented in the factorization of very large matrices with missing entries. The model is evaluated on a collaborative filtering task, where users have rated a collection of movies and the system is asked to predict their ratings for other movies. The Netflix data set is used for evaluation, which consists of around 100 million ratings.

Using root mean-squared error (RMSE) as an evaluation metric, results show that the suggested model outperforms alternative factorization techniques. Results also show how Gibbs sampling outperforms variational Bayes on this task, despite the large number of ratings and model parameters. Matlab implementations of the proposed algorithms are available from cogsys.imm.dtu.dk/ordinalmatrixfactorization.

Language: English
Publisher: Springer US
Year: 2012
Pages: 945-957
ISSN: 15731375 and 09603174
Types: Journal article
DOI: 10.1007/s11222-011-9264-x
ORCIDs: Winther, Ole

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