FLEXIBLE GENERALIZED VARYING COEFFICIENT REGRESSION MODELS

Citation
Young K. Lee et al., FLEXIBLE GENERALIZED VARYING COEFFICIENT REGRESSION MODELS, Annals of statistics , 40(3), 2012, pp. 1906-1933
Journal title
ISSN journal
00905364
Volume
40
Issue
3
Year of publication
2012
Pages
1906 - 1933
Database
ACNP
SICI code
Abstract
This paper studies a very flexible model that can be used widely to analyze the relation between a response and multiple covariates. The model is nonparametric, yet renders easy interpretation for the effects of the covariates. The model accommodates both continuous and discrete random variables for the response and covariates. It is quite flexible to cover the generalized varying coefficient models and the generalized additive models as special cases. Under a weak condition we give a general theorem that the problem of estimating the multivariate mean function is equivalent to that of estimating its univariate component functions. We discuss implications of the theorem for sieve and penalized least squares estimators, and then investigate the outcomes in full details for a kernel-type estimator. The kernel estimator is given as a solution of a system of nonlinear integral equations. We provide an iterative algorithm to solve the system of equations and discuss the theoretical properties of the estimator and the algorithm. Finally, we give simulation results.