Relative Performance Guarantees for Approximate Inference in Latent Dirichlet Allocation
Mukherjee, Indraneel, Blei, David M.
–Neural Information Processing Systems
Hierarchical probabilistic modeling of discrete data has emerged as a powerful tool for text analysis. Posterior inference in such models is intractable, and practitioners rely on approximate posterior inference methods such as variational inference or Gibbs sampling. There has been much research in designing better approximations, but there is yet little theoretical understanding of which of the available techniques are appropriate, and in which data analysis settings. In this paper we provide the beginnings of such understanding. We analyze the improvement that the recently proposed collapsed variational inference (CVB) provides over mean field variational inference (VB) in latent Dirichlet allocation.
Neural Information Processing Systems
Feb-15-2020, 02:44:10 GMT
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