Penalised spline estimation for generalised partially linear single-index models

被引:2
作者
Yan Yu
Chaojiang Wu
Yuankun Zhang
机构
[1] University of Cincinnati,Department of Operations, Business Analytics and Information Systems
[2] Drexel University,Department of Decision Sciences and MIS
[3] University of Cincinnati,Department of Mathematical Sciences
来源
Statistics and Computing | 2017年 / 27卷
关键词
Generalised linear model; Generalised additive model; Low rank approximation; Penalised splines; Profile likelihood;
D O I
暂无
中图分类号
学科分类号
摘要
Generalised linear models are frequently used in modeling the relationship of the response variable from the general exponential family with a set of predictor variables, where a linear combination of predictors is linked to the mean of the response variable. We propose a penalised spline (P-spline) estimation for generalised partially linear single-index models, which extend the generalised linear models to include nonlinear effect for some predictors. The proposed models can allow flexible dependence on some predictors while overcome the “curse of dimensionality”. We investigate the P-spline profile likelihood estimation using the readily available R package mgcv, leading to straightforward computation. Simulation studies are considered under various link functions. In addition, we examine different choices of smoothing parameters. Simulation results and real data applications show effectiveness of the proposed approach. Finally, some large sample properties are established.
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页码:571 / 582
页数:11
相关论文
共 46 条
[1]  
Anderssen RS(1974)A time series approach to numerical differentiation Technometrics 16 69-75
[2]  
Bloomfield P(2012)Robust estimates in generalised partially linear single-index models Test 21 386-411
[3]  
Boente G(1997)Generalized partially linear single-index models J. Am. Stat. Assoc. 92 477-489
[4]  
Rodriguez D(2005)Bayesian analysis for penalized spline regression using WinBUGS J. Stat. Softw. 14 1-24
[5]  
Carroll RJ(1979)Smoothing noisy data with spline functions: estimating the correct degree of smoothing by the method of generalized cross-validation Numer. Math. 31 377-403
[6]  
Fan J(1996)Flexible smoothing with B-splines and penalties Stat. Sci. 11 89-121
[7]  
Gijbels I(1994)Spline-based tests in survival analysis Biometrics 50 640-652
[8]  
Wand MP(1993)Optimal smoothing in single-index models Ann. Stat. 21 157-178
[9]  
Crainiceanu CM(2002)Likelihood-based local polynomial fitting for single-index models J. Multivar. Anal. 80 302-321
[10]  
Ruppert D(2010)Estimation and testing for partially linear single-index models Ann. Stat. 38 3811-3836