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Learning Proposals for Probabilistic Programs with Inference Combinators

Machine Learning 2021-06-18 v3 Machine Learning Programming Languages

Abstract

We develop operators for construction of proposals in probabilistic programs, which we refer to as inference combinators. Inference combinators define a grammar over importance samplers that compose primitive operations such as application of a transition kernel and importance resampling. Proposals in these samplers can be parameterized using neural networks, which in turn can be trained by optimizing variational objectives. The result is a framework for user-programmable variational methods that are correct by construction and can be tailored to specific models. We demonstrate the flexibility of this framework by implementing advanced variational methods based on amortized Gibbs sampling and annealing.

Keywords

Cite

@article{arxiv.2103.00668,
  title  = {Learning Proposals for Probabilistic Programs with Inference Combinators},
  author = {Sam Stites and Heiko Zimmermann and Hao Wu and Eli Sennesh and Jan-Willem van de Meent},
  journal= {arXiv preprint arXiv:2103.00668},
  year   = {2021}
}

Comments

Accepted to UAI 2021