General Bounds on Bayes Errors for Regression with Gaussian Processes

Part of Advances in Neural Information Processing Systems 11 (NIPS 1998)

Bibtex Metadata Paper

Authors

Manfred Opper, Francesco Vivarelli

Abstract

Based on a simple convexity lemma, we develop bounds for differ(cid:173) ent types of Bayesian prediction errors for regression with Gaussian processes. The basic bounds are formulated for a fixed training set. Simpler expressions are obtained for sampling from an input distri(cid:173) bution which equals the weight function of the covariance kernel, yielding asymptotically tight results. The results are compared with numerical experiments.