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Estimation and model selection in generalized additive partial linear models for correlated data with diverging number of covariates

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Title Estimation and model selection in generalized additive partial linear models for correlated data with diverging number of covariates
Names Wang, Li (creator)
Xue, Lan (creator)
Qu, Annie (creator)
Liang, Hua (creator)
Date Issued 2014-04 (iso8601)
Note This is the publisher’s final pdf. The published article is copyrighted by the Institute of Mathematical Statistics and can be found at: http://www.imstat.org/aos/.
Abstract We propose generalized additive partial linear models for complex data
which allow one to capture nonlinear patterns of some covariates, in the presence
of linear components. The proposed method improves estimation efficiency
and increases statistical power for correlated data through incorporating
the correlation information. A unique feature of the proposed method is
its capability of handling model selection in cases where it is difficult to specify
the likelihood function. We derive the quadratic inference function-based
estimators for the linear coefficients and the nonparametric functions when
the dimension of covariates diverges, and establish asymptotic normality for
the linear coefficient estimators and the rates of convergence for the nonparametric
functions estimators for both finite and high-dimensional cases. The
proposed method and theoretical development are quite challenging since the
numbers of linear covariates and nonlinear components both increase as the
sample size increases. We also propose a doubly penalized procedure for variable
selection which can simultaneously identify nonzero linear and nonparametric
components, and which has an asymptotic oracle property. Extensive
Monte Carlo studies have been conducted and show that the proposed procedure
works effectively even with moderate sample sizes. A pharmacokinetics
study on renal cancer data is illustrated using the proposed method.
Genre Article
Topic Additive model
Identifier Wang, L., Xue, L., Qu, A., & Liang, H. (2014). Estimation and model selection in generalized additive partial linear models for correlated data with diverging number of covariates. Annals of Statistics, 42(2), 592-624. doi:10.1214/13-AOS1194

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