Latent class models for collaborative filtering

Thomas Hofmann(International Computer Science Institute), Jan Puzicha(University of Bonn)
Unknown
July 31, 1999
Cited by 420

Abstract

This paper presents a statistical approachto collaborative filtering and investigates the use of latent class models for predicting individual choices and preferences based on observed preference behavior. Two models are discussed and compared: the aspect model, a probabilistic latent space model which models individual preferences as a convex combination of preference factors, and the two-sided clustering model, which simultaneously partitions persons and objects into clusters. We present EM algorithms for different variants of the aspect model and derive an approximate EM algorithm based on a variational principle for the two-sided clustering model. The benefits of the different models are experimentally investigated on a large movie data set.


Related Papers

No related papers found

Powered by citation graph analysis