Title
MuProp: Unbiased Backpropagation for Stochastic Neural Networks.
Abstract
Abstract: Deep neural networks are powerful parametric models that can be trained efficiently using the backpropagation algorithm. Stochastic neural networks combine the power of large parametric functions with that of graphical models, which makes it possible to learn very complex distributions. However, as backpropagation is not directly applicable to stochastic networks that include discrete sampling operations within their computational graph, training such networks remains difficult. We present MuProp, an unbiased gradient estimator for stochastic networks, designed to make this task easier. MuProp improves on the likelihood-ratio estimator by reducing its variance using a control variate based on the first-order Taylor expansion of a mean-field network. Crucially, unlike prior attempts at using backpropagation for training stochastic networks, the resulting estimator is unbiased and well behaved. Our experiments on structured output prediction and discrete latent variable modeling demonstrate that MuProp yields consistently good performance across a range of difficult tasks.
Year
Venue
Field
2015
international conference on learning representations
Parametric equation,Parametric model,Computer science,Latent variable model,Control variates,Stochastic neural network,Artificial intelligence,Graphical model,Backpropagation,Machine learning,Estimator
DocType
Volume
Citations 
Journal
abs/1511.05176
21
PageRank 
References 
Authors
0.87
12
4
Name
Order
Citations
PageRank
Shixiang Gu145426.97
Sergey Levine23377182.21
Ilya Sutskever3258141120.24
Andriy Mnih42003192.25