5,320 research outputs found
A New Approach to Probabilistic Programming Inference
We introduce and demonstrate a new approach to inference in expressive
probabilistic programming languages based on particle Markov chain Monte Carlo.
Our approach is simple to implement and easy to parallelize. It applies to
Turing-complete probabilistic programming languages and supports accurate
inference in models that make use of complex control flow, including stochastic
recursion. It also includes primitives from Bayesian nonparametric statistics.
Our experiments show that this approach can be more efficient than previously
introduced single-site Metropolis-Hastings methods.Comment: Updated version of the 2014 AISTATS paper (to reflect changes in new
language syntax). 10 pages, 3 figures. Proceedings of the Seventeenth
International Conference on Artificial Intelligence and Statistics, JMLR
Workshop and Conference Proceedings, Vol 33, 201
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