The Subspace Information Criterion for Infinite Dimensional Hypothesis Spaces (2002)
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| Venue: | Journal of Machine Learning Research |
| Citations: | 4 - 4 self |
BibTeX
@ARTICLE{Sugiyama02thesubspace,
author = {Masashi Sugiyama and Klaus-Robert Müller and Nello Cristianini},
title = {The Subspace Information Criterion for Infinite Dimensional Hypothesis Spaces},
journal = {Journal of Machine Learning Research},
year = {2002},
volume = {3},
pages = {35--9}
}
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Abstract
A central problem in learning is selection of an appropriate model. This is typically done by estimating the unknown generalization errors of a set of models to be selected from and then choosing the model with minimal generalization error estimate. In this article, we discuss the problem of model selection and generalization error estimation in the context of kernel regression models, e.g., kernel ridge regression, kernel subset regression or Gaussian process regression.







