Amortized Population Gibbs Samplers with Neural Sufficient Statistics
Wu, Hao, Zimmermann, Heiko, Sennesh, Eli, Le, Tuan Anh, van de Meent, Jan-Willem
We develop amortized population Gibbs (APG) samplers, a new class of autoencoding variational methods for deep probabilistic models. APG samplers construct high-dimensional proposals by iterating over updates to lower-dimensional blocks of variables. Each conditional update is a neural proposal, which we train by minimizing the inclusive KL divergence relative to the conditional posterior. To appropriately account for the size of the input data, we develop a new parameterization in terms of neural sufficient statistics, resulting in quasi-conjugate variational approximations. Experiments demonstrate that learned proposals converge to the known analytical conditional posterior in conjugate models, and that APG samplers can learn inference networks for highly-structured deep generative models when the conditional posteriors are intractable. Here APG samplers offer a path toward scaling up stochastic variational methods to models in which standard autoencoding architectures fail to produce accurate samples.
Nov-4-2019
- Country:
- North America > United States
- Massachusetts > Middlesex County > Cambridge (0.04)
- Asia
- Middle East > Jordan (0.04)
- China (0.04)
- North America > United States
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- Research Report (0.64)
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