Learning Stochastic Inverses
Stuhlmüller, Andreas, Taylor, Jacob, Goodman, Noah
–Neural Information Processing Systems
We describe a class of algorithms for amortized inference in Bayesian networks. In this setting, we invest computation upfront to support rapid online inference for a wide range of queries. Our approach is based on learning an inverse factorization of a model's joint distribution: a factorization that turns observations into root nodes. Our algorithms accumulate information to estimate the local conditional distributions that constitute such a factorization. These stochastic inverses can be used to invert each of the computation steps leading to an observation, sampling backwards in order to quickly find a likely explanation.
Neural Information Processing Systems
Feb-14-2020, 19:25:55 GMT