Journal article

Domain selection for the varying coefficient model via local polynomial regression

D Kong, HD Bondell, Y Wu

Computational Statistics and Data Analysis | ELSEVIER SCIENCE BV | Published : 2015

Abstract

In this article, we consider the varying coefficient model, which allows the relationship between the predictors and response to vary across the domain of interest, such as time. In applications, it is possible that certain predictors only affect the response in particular regions and not everywhere. This corresponds to identifying the domain where the varying coefficient is nonzero. Towards this goal, local polynomial smoothing and penalized regression are incorporated into one framework. Asymptotic properties of our penalized estimators are provided. Specifically, the estimators enjoy the oracle properties in the sense that they have the same bias and asymptotic variance as the local polyn..

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University of Melbourne Researchers