A Search Algorithm for Latent Variable Models with Unbounded Domains

Authors

  • Michael Chiang University of British Columbia
  • David Poole University of British Columbia

DOI:

https://doi.org/10.1609/aaai.v26i1.8397

Keywords:

Bayesian nonparametrics, search, probabilistic models

Abstract

This paper concerns learning and prediction with probabilistic models where the domain sizes of latent variables have no a priori upper-bound. Current approaches represent prior distributions over latent variables by stochastic processes such as the Dirichlet process, and rely on Monte Carlo sampling to estimate the model from data. We propose an alternative approach that searches over the domain size of latent variables, and allows arbitrary priors over the their domain sizes. We prove error bounds for expected probabilities, where the error bounds diminish with increasing search scope. The search algorithm can be truncated at any time. We empirically demonstrate the approach for topic modelling of text documents.

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Published

2021-09-20

How to Cite

Chiang, M., & Poole, D. (2021). A Search Algorithm for Latent Variable Models with Unbounded Domains. Proceedings of the AAAI Conference on Artificial Intelligence, 26(1), 1888-1894. https://doi.org/10.1609/aaai.v26i1.8397