TY - JOUR
T1 - Efficient Quantile Regression Analysis With Missing Observations
AU - Chen, Xuerong
AU - Wan, Alan T.K.
AU - Zhou, Yong
N1 - Publisher Copyright:
© 2015 American Statistical Association.
PY - 2015/4/3
Y1 - 2015/4/3
N2 - This article examines the problem of estimation in a quantile regression model when observations are missing at random under independent and nonidentically distributed errors. We consider three approaches of handling this problem based on nonparametric inverse probability weighting, estimating equations projection, and a combination of both. An important distinguishing feature of our methods is their ability to handle missing response and/or partially missing covariates, whereas existing techniques can handle only one or the other, but not both. We prove that our methods yield asymptotically equivalent estimators that achieve the desirable asymptotic properties of unbiasedness, normality, and (Formula presented.) -consistency. Because we do not assume that the errors are identically distributed, our theoretical results are valid under heteroscedasticity, a particularly strong feature of our methods. Under the special case of identical error distributions, all of our proposed estimators achieve the semiparametric efficiency bound. To facilitate the practical implementation of these methods, we develop an iterative method based on the majorize/minimize algorithm for computing the quantile regression estimates, and a bootstrap method for computing their variances. Our simulation findings suggest that all three methods have good finite sample properties. We further illustrate these methods by a real data example. Supplementary materials for this article are available online.
AB - This article examines the problem of estimation in a quantile regression model when observations are missing at random under independent and nonidentically distributed errors. We consider three approaches of handling this problem based on nonparametric inverse probability weighting, estimating equations projection, and a combination of both. An important distinguishing feature of our methods is their ability to handle missing response and/or partially missing covariates, whereas existing techniques can handle only one or the other, but not both. We prove that our methods yield asymptotically equivalent estimators that achieve the desirable asymptotic properties of unbiasedness, normality, and (Formula presented.) -consistency. Because we do not assume that the errors are identically distributed, our theoretical results are valid under heteroscedasticity, a particularly strong feature of our methods. Under the special case of identical error distributions, all of our proposed estimators achieve the semiparametric efficiency bound. To facilitate the practical implementation of these methods, we develop an iterative method based on the majorize/minimize algorithm for computing the quantile regression estimates, and a bootstrap method for computing their variances. Our simulation findings suggest that all three methods have good finite sample properties. We further illustrate these methods by a real data example. Supplementary materials for this article are available online.
KW - Estimating equations
KW - Missing at random
KW - Resampling method
KW - Semiparametric efficient
UR - https://www.scopus.com/pages/publications/84936771391
U2 - 10.1080/01621459.2014.928219
DO - 10.1080/01621459.2014.928219
M3 - 文章
AN - SCOPUS:84936771391
SN - 0162-1459
VL - 110
SP - 723
EP - 741
JO - Journal of the American Statistical Association
JF - Journal of the American Statistical Association
IS - 510
ER -