Title
Bayesian Recurrent Neural Networks.
Abstract
In this work we explore a straightforward variational Bayes scheme for Recurrent Neural Networks. Firstly, we show that a simple adaptation of truncated backpropagation through time can yield good quality uncertainty estimates and superior regularisation at only a small extra computational cost during training, also reducing the amount of parameters by 80%. Secondly, we demonstrate how a novel kind of posterior approximation yields further improvements to the performance of Bayesian RNNs. We incorporate local gradient information into the approximate posterior to sharpen it around the current batch statistics. We show how this technique is not exclusive to recurrent neural networks and can be applied more widely to train Bayesian neural networks. We also empirically demonstrate how Bayesian RNNs are superior to traditional RNNs on a language modelling benchmark and an image captioning task, as well as showing how each of these methods improve our model over a variety of other schemes for training them. We also introduce a new benchmark for studying uncertainty for language models so future methods can be easily compared.
Year
Venue
Field
2017
arXiv: Learning
Backpropagation through time,Closed captioning,Computer science,Recurrent neural network,Bayesian neural networks,Artificial intelligence,Language modelling,Machine learning,Language model,Bayes' theorem,Bayesian probability
DocType
Volume
Citations 
Journal
abs/1704.02798
20
PageRank 
References 
Authors
0.75
28
3
Name
Order
Citations
PageRank
Meire Fortunato1201.42
Charles Blundell282241.64
Oriol Vinyals39419418.45