作者
Hua Liang, Suojin Wang, James M Robins, Raymond J Carroll
发表日期
2004/6/1
期刊
Journal of the American Statistical Association
卷号
99
期号
466
页码范围
357-367
出版商
Taylor & Francis
简介
The partially linear model Y = XTβ + ν(Z) + ϵ has been studied extensively when data are completely observed. In this article, we consider the case where the covariate X is sometimes missing, with missingness probability π depending on (Y, Z). New methods are developed for estimating β and ν(·). Our methods are shown to outperform asymptotically methods based only on the complete data. Asymptotic efficiency is discussed, and the semiparametric efficient score function is derived. Justification of the use of the nonparametric bootstrap in this context is sketched. The proposed estimators are extended to a working independence analysis of longitudinal/clustered data and applied to analyze an AIDS clinical trial dataset. The results of a simulation experiment are also given to illustrate our approach.
引用总数
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学术搜索中的文章
H Liang, S Wang, JM Robins, RJ Carroll - Journal of the American Statistical Association, 2004