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Single-Index Model With Varying Coefficients

Niu, Feiyang
Format
Thesis/Dissertation; Online
Author
Niu, Feiyang
Advisor
Zhou, Jianhui
Abstract
To account for heterogeneity among subjects, we study a flexible single index model with varying coefficients. We consider using dimension reduction methods to estimate the varying coefficient functions. The developed method employs B-spline to approximate the varying coefficients and canonical correlation to estimate the B-spline coefficients, and avoids the direct estimation of the unknown link function. Due to the use of B-spline approximation, a group-wise Lasso penalty is imposed naturally on the estimator to select informative variables. A number of model selection criteria are applied and compared for tuning the parameter involved in group-wise Lasso penalty. The developed estimation and variable selection methods are easy to implement using the existing software packages, and can be generalized to multi-index models. Asymptotic properties are investigated, and simulation studies show satisfactory numerical performance of the developed methods. We apply the developed methods on a kidney study to select informative variable for survival time.
Language
English
Published
University of Virginia, Department of Statistics, PHD (Doctor of Philosophy), 2015
Published Date
2015-11-04
Degree
PHD (Doctor of Philosophy)
Collection
Libra ETD Repository
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