Nonparametric Bayesian Factor Analysis for Dynamic Count Matrices

2015 
A gamma process dynamic Poisson factor analysis model is proposed to factorize a dynamic count matrix, whose columns are sequentially observed count vectors. The model builds a novel Markov chain that sends the latent gamma random variables at time (t 1) as the shape parameters of those at time t, which are linked to observed or latent counts under the Poisson likelihood. The signicant challenge of inferring the gamma shape parameters is fully addressed, using unique data augmentation and marginalization techniques for the negative binomial distribution. The same nonparametric Bayesian model also applies to the factorization of a dynamic binary matrix, via a BernoulliPoisson link that connects a binary observation to a latent count, with closed-form conditional posteriors for the latent counts and ecient computation for sparse observations. We apply the model to text and music analysis, with state-of-the-art results.
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