The Loss Rank Principle for Model Selection
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Hutter, Marcus
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Springer Verlag
Abstract
A key issue in statistics and machine learning is to automatically
select the “right” model complexity, e.g. the number of neighbors to
be averaged over in k nearest neighbor (kNN) regression or the polynomial
degree in regression with polynomials. We suggest a novel principle
(LoRP) for model selection in regression and classification. It is based
on the loss rank, which counts how many other (fictitious) data would
be fitted better. LoRP selects the model that has minimal loss rank.
Unlike most penalized maximum likelihood variants (AIC,BIC,MDL),
LoRP only depends on the regression functions and the loss function. It
works without a stochastic noise model, and is directly applicable to any
non-parametric regressor, like kNN.
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Book Title
Learning Theory : 20th Annual Conference on Learning Theory, COLT 2007, San Diego, CA, USA, June 13-15, 2007, Proceedings