Revisiting reweighted wake-sleep for models with stochastic control flow
Stochastic control-flow models (SCFMs) are a class of generative models that involve branching on choices from discrete random variables. Amortized gradient-based learning of SCFMs is challenging as most approaches targeting discrete variables rely on their continuous relaxations—which can be intrac...
Main Authors: | Le, T, Kosiorek, A, Siddharth, N, Teh, Y, Wood, F |
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Format: | Conference item |
Published: |
Association for Uncertainty in Artificial Intelligence
2019
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