TY - JOUR
T1 - Semiparametric inference for estimating equations with nonignorably missing covariates
AU - Chen, Ji
AU - Fang, Fang
AU - Xiao, Zhiguo
N1 - Publisher Copyright:
© 2018, © American Statistical Association and Taylor & Francis 2018.
PY - 2018/7/3
Y1 - 2018/7/3
N2 - We consider statistical inference of unknown parameters in estimating equations (EEs) when some covariates have nonignorably missing values, which is quite common in practice but has rarely been discussed in the literature. When an instrument, a fully observed covariate vector that helps identifying parameters under nonignorable missingness, is available, the conditional distribution of the missing covariates given other covariates can be estimated by the pseudolikelihood method of Zhao and Shao [(2015), ‘Semiparametric pseudo likelihoods in generalised linear models with nonignorable missing data’, Journal of the American Statistical Association, 110, 1577–1590)] and be used to construct unbiased EEs. These modified EEs then constitute a basis for valid inference by empirical likelihood. Our method is applicable to a wide range of EEs used in practice. It is semiparametric since no parametric model for the propensity of missing covariate data is assumed. Asymptotic properties of the proposed estimator and the empirical likelihood ratio test statistic are derived. Some simulation results and a real data analysis are presented for illustration.
AB - We consider statistical inference of unknown parameters in estimating equations (EEs) when some covariates have nonignorably missing values, which is quite common in practice but has rarely been discussed in the literature. When an instrument, a fully observed covariate vector that helps identifying parameters under nonignorable missingness, is available, the conditional distribution of the missing covariates given other covariates can be estimated by the pseudolikelihood method of Zhao and Shao [(2015), ‘Semiparametric pseudo likelihoods in generalised linear models with nonignorable missing data’, Journal of the American Statistical Association, 110, 1577–1590)] and be used to construct unbiased EEs. These modified EEs then constitute a basis for valid inference by empirical likelihood. Our method is applicable to a wide range of EEs used in practice. It is semiparametric since no parametric model for the propensity of missing covariate data is assumed. Asymptotic properties of the proposed estimator and the empirical likelihood ratio test statistic are derived. Some simulation results and a real data analysis are presented for illustration.
KW - Empirical likelihood
KW - likelihood ratio statistics
KW - moment condition model
KW - nonresponse instrument
KW - not missing at random
KW - pseudolikelihood
UR - https://www.scopus.com/pages/publications/85048794646
U2 - 10.1080/10485252.2018.1482295
DO - 10.1080/10485252.2018.1482295
M3 - 文章
AN - SCOPUS:85048794646
SN - 1048-5252
VL - 30
SP - 796
EP - 812
JO - Journal of Nonparametric Statistics
JF - Journal of Nonparametric Statistics
IS - 3
ER -