DocumentCode
1277727
Title
Bayesian approach to neural-network modeling with input uncertainty
Author
Wright, W.A.
Author_Institution
Res. Centre, BAe. plc, Bristol, UK
Volume
10
Issue
6
fYear
1999
fDate
11/1/1999 12:00:00 AM
Firstpage
1261
Lastpage
1270
Abstract
It is generally assumed when using Bayesian inference methods for neural networks that the input data contains no noise or corruption. For real-world (errors in variable) problems this is clearly an unsafe assumption. This paper presents a Bayesian neural-network framework which allows for input noise provided that some model of the noise process exists. In the limit where the noise process is small and symmetric it is shown, using the Laplace approximation, that this method gives an additional term to the usual Bayesian error bar which depends on the variance of the input noise process. Further, by treating the true (noiseless) input as a hidden variable and sampling this jointly with the network weights using a Markov chain Monte Carlo method, it is demonstrated that it is possible to infer the regression over the noiseless input
Keywords
Bayes methods; Markov processes; Monte Carlo methods; approximation theory; error statistics; estimation theory; inference mechanisms; neural nets; noise; Bayesian error; Bayesian inference; Laplace approximation; Markov chain; Monte Carlo method; estimation theory; input noise; neural-network modeling; uncertainty; Bars; Bayesian methods; Estimation error; Learning systems; Multilayer perceptrons; Neural networks; Sampling methods; Sensor phenomena and characterization; Sensor systems; Uncertainty;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/72.809073
Filename
809073
Link To Document