Title
Sample selection for MCMC-based recommender systems
Abstract
Bayesian Inference with Markov Chain Monte Carlo (MCMC) has been shown to provide high prediction quality in recommender systems. The advantage over learning methods such as coordinate descent/alternating least-squares (ALS) or (stochastic) gradient descent (SGD) is that MCMC takes uncertainty into account and moreover MCMC can easily integrate priors to learn regularization values. For factorization models, MCMC inference can be done with efficient Gibbs samplers. However, MCMC algorithms are not point estimators, but they generate a chain of models. The whole chain of models is used to calculate predictions. For large scale models like factorization methods with millions or billions of model parameters, saving the whole chain of models is very storage intensive and can even get infeasible in practice. In this paper, we address this problem and show how a small subset from the chain of models can approximate the predictive distribution well. We use the fact that models from the chain are correlated and propose online selection techniques to store only a small subset of the models. We perform an empirical analysis on the large scale Netflix dataset with several Bayesian factorization models, including matrix factorization and SVD++. We show that the proposed selection techniques approximate the predictions well with only a small subset of model samples.
Year
DOI
Venue
2013
10.1145/2507157.2507224
conference on recommender systems
Keywords
DocType
Citations 
mcmc inference,mcmc algorithm,bayesian factorization model,sample selection,bayesian inference,matrix factorization,whole chain,small subset,factorization model,factorization method,gradient descent,mcmc-based recommender system
Conference
0
PageRank 
References 
Authors
0.34
5
3
Name
Order
Citations
PageRank
Thierry Silbermann180.80
Immanuel Bayer2161.74
Steffen Rendle3196370.68