Statistical Methods and Applications

, Volume 17, Issue 3, pp 321–334 | Cite as

A note on Bayesian nonparametric regression function estimation

Original Article

Abstract

In this note the problem of nonparametric regression function estimation in a random design regression model with Gaussian errors is considered from the Bayesian perspective. It is assumed that the regression function belongs to a class of functions with a known degree of smoothness. A prior distribution on the given class can be induced by a prior on the coefficients in a series expansion of the regression function through an orthonormal system. The rate of convergence of the resulting posterior distribution is employed to provide a measure of the accuracy of the Bayesian estimation procedure defined by the posterior expected regression function. We show that the Bayes’ estimator achieves the optimal minimax rate of convergence under mean integrated squared error over the involved class of regression functions, thus being comparable to other popular frequentist regression estimators.

Keywords

Nonparametric regression Posterior distribution Rate of convergence Sieve prior 

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Copyright information

© Springer-Verlag 2007

Authors and Affiliations

  1. 1.Istituto di Metodi QuantitativiUniversità Commerciale “L. Bocconi”MilanoItaly

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