Gaussian regression and optimal finite dimensional linear models


Autoria(s): Zhu, Huaiyu; Williams, Christopher K. I.; Rohwer, Richard; Morciniec, Michal
Data(s)

03/07/1997

Resumo

The problem of regression under Gaussian assumptions is treated generally. The relationship between Bayesian prediction, regularization and smoothing is elucidated. The ideal regression is the posterior mean and its computation scales as <span class='mathrm'>O(n<sup>3</sup>)</span>, where <span class='mathrm'>n</span> is the sample size. We show that the optimal <span class='mathrm'>m</span>-dimensional linear model under a given prior is spanned by the first <span class='mathrm'>m</span> eigenfunctions of a covariance operator, which is a trace-class operator. This is an infinite dimensional analogue of principal component analysis. The importance of Hilbert space methods to practical statistics is also discussed.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/1197/1/NCRG_97_011.pdf

Zhu, Huaiyu; Williams, Christopher K. I.; Rohwer, Richard and Morciniec, Michal (1997). Gaussian regression and optimal finite dimensional linear models. Technical Report. Aston University, Birmingham.

Publicador

Aston University

Relação

http://eprints.aston.ac.uk/1197/

Tipo

Monograph

NonPeerReviewed