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Department of Statistics, The Ohio State University
Statistics and Biostatistics Colloquium Series
Component Selection and Smoothing in High Dimensional Nonparametric
Regression
Yi Lin
University of Wisconsin
3:30PM - Thursday, May 20, 2004
Room 170, Eighteenth Avenue Bldg. (EA 170)
ABSTRACT
We propose a new method for model selection and model fitting in
nonparametric regression models, in the framework of smoothing
spline ANOVA. The ``COSSO'' is a method of regularization with the
penalty functional being the sum of component norms, instead of the
squared norm employed in the traditional smoothing spline
method. The COSSO provides a unified framework for several recent
proposals for model selection in linear models and smoothing spline
ANOVA models. Theoretical properties, such as the existence and the
rate of convergence of the COSSO estimator, are studied. In the
special case of a tensor product design with periodic functions, a
detailed analysis reveals that the COSSO does model selection by
applying a novel soft thresholding type operation to the function
components. We give an equivalent formulation of the COSSO estimator
which leads naturally to an iterative algorithm. We compare the
COSSO with the MARS, a popular method that builds functional ANOVA
models, in simulations and real examples. The COSSO gives very
competitive performances in these studies.
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