Polynomial spline estimation of panel count data model with an unknown link function

被引:0
作者
Yijun Wang
Weiwei Wang
Xiaobing Zhao
机构
[1] Zhejiang Gongshang University,School of Statistics and Mathematics
[2] Zhejiang Gongshang University,Collaborative Innovation Center of Statistical Data Engineering, Technology & Application
[3] Zhejiang University of Finance and Economics,School of Data Sciences
来源
Statistical Papers | 2023年 / 64卷
关键词
Panel count data; Single-index; Partial likelihood function; B-spline;
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中图分类号
学科分类号
摘要
Panel count data are frequently encountered in follow-up studies such as clinical trials, reliability researches, and insurance studies. Models about this type data usually assume the linearity form of the covariate variables on the log conditional mean function. However, the linearity assumption cannot be always guaranteed in practical applications, especially when high-dimensional covariates exist under investigation. In this paper, we propose a more flexible conditional mean regression model of panel count data with an unknown link function to describe the possible nonlinearity of the covariate effects. The partial likelihood procedure is developed to estimate the unknown link function and the regression parameters simultaneously by first approximating the unknown link function by polynomial splines, and then a two-step iterative algorithm is developed for computing implementation. Finally, the Breslow-type estimator is constructed for the baseline mean function. Asymptotic results of the proposed estimators are discussed under some regularity conditions. In addition, penalized spline estimation procedure is also introduced as an extension. Extensive numerical studies are carried out and indicate that the proposed procedure works well. Finally, two applications of bladder cancer study and skin cancer study are also presented for illustration.
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页码:1805 / 1832
页数:27
相关论文
共 74 条
  • [1] Dong C(2015)Estimation for single-index and partially linear single-index integrated models Ann Stat 44 425-453
  • [2] Gao J(2021)Robust estimation of semiparametric transformation model for panel count data J Syst Sci Complexity 34 2334-2356
  • [3] Tjstheim D(1989)Investigating smooth multiple regression by the method of average derivatives J Am Stat Assoc 84 157-178
  • [4] Feng Y(1993)Optimal smoothing in single-index models Ann Stat 21 157-178
  • [5] Wang Y(2009)Semiparametric analysis of panel count data with correlated observation and follow-up times Lifetime Data Anal 15 177-196
  • [6] Wang W(2003)Regression parameter estimation from panel counts Scand J Stat 30 25-43
  • [7] Chen Z(2006)Polynomial spline estimation and inference of proportional hazards regression models with flexible relative risk form Biometrics 62 793-802
  • [8] Härdle W(1993)Semiparametric least squares (SLS) and weighted SLS estimation of single-index models J Econ 58 71-120
  • [9] Stoker TM(2007)Variable selection for the single-index model Biometrika 94 217-229
  • [10] Härdle W(2011)Partially varying coefficient single-index proportional hazards regression models Comput Stat Data Anal 55 389-400