Carnegie Mellon University
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A Bayesian Matrix Factorization Model for Relational Data

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journal contribution
posted on 2010-07-01, 00:00 authored by Ajit P. Singh, Geoffrey J. Gordon

Relational learning can be used to augment one data source with other correlated sources of information, to improve predictive accuracy. We frame a large class of relational learning problems as matrix factorization problems, and propose a hierarchical Bayesian model. Training our Bayesian model using random-walk Metropolis-Hastings is impractically slow, and so we develop a block MetropolisHastings sampler which uses the gradient and Hessian of the likelihood to dynamically tune the proposal. We demonstrate that a predictive model of brain response to stimuli can be improved by augmenting it with side information about the stimuli.

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2010-07-01

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