Title :
Bayesian techniques for neural networks — Review and case studies
Author :
Lampinen, Jouko ; Vehtari, Aki
Author_Institution :
Lab. of Comput. Eng., Helsinki Univ. of Technol., Espoo, Finland
Abstract :
We give a short review on Bayesian techniques for neural networks and demonstrate the advantages of the approach in a number of industrial applications. Bayesian approach provides a principled way to handle the problem of overfitting, by averaging over all model complexities weighted by their posterior probability given the data sample. The approach also facilitates estimation of the confidence intervals of the results, and comparison to other model selection techniques (such as the committee of early stopped networks) often reveals faulty assumptions in the models. In this contribution we review the Bayesian techniques for neural networks and present comparison results from several case studies that include regression, classification, and inverse problems.
Keywords :
Bayes methods; inverse problems; neural nets; pattern classification; regression analysis; Bayesian techniques; classification; confidence intervals; inverse problems; model complexities; model selection techniques; neural networks; posterior probability; regression; Bayes methods; Complexity theory; Computational modeling; Data models; Neural networks; Noise; Predictive models;
Conference_Titel :
Signal Processing Conference, 2000 10th European
Conference_Location :
Tampere
Print_ISBN :
978-952-1504-43-3