Emergent Mind

Poisson--Gamma Dynamical Systems

(1701.05573)
Published Jan 19, 2017 in stat.ML and cs.LG

Abstract

We introduce a new dynamical system for sequentially observed multivariate count data. This model is based on the gamma--Poisson constructiona natural choice for count dataand relies on a novel Bayesian nonparametric prior that ties and shrinks the model parameters, thus avoiding overfitting. We present an efficient MCMC inference algorithm that advances recent work on augmentation schemes for inference in negative binomial models. Finally, we demonstrate the model's inductive bias using a variety of real-world data sets, showing that it exhibits superior predictive performance over other models and infers highly interpretable latent structure.

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