Paper

An Infinite Factor Model Hierarchy Via a Noisy-Or Mechanism

The Indian Buffet Process is a Bayesian nonparametric approach that models objects as arising from an infinite number of latent factors. Here we extend the latent factor model framework to two or more unbounded layers of latent factors. From a generative perspective, each layer defines a conditional factorial prior distribution over the binary latent variables of the layer below via a noisy-or mechanism. We explore the properties of the model with two empirical studies, one digit recognition task and one music tag data experiment.

Neural Information Processing SystemsPublished 2009-12-07Paper link

Authors: Douglas Eck · Yoshua Bengio · Aaron Courville

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