We consider regression models with parametric (linear or nonlinear) re-gression function and allow responses to be “missing at random. ” We assume that the errors have mean zero and are independent of the covariates. In or-der to estimate expectations of functions of covariate and response we use a fully imputed estimator, namely an empirical estimator based on estimators of conditional expectations given the covariate. We exploit the independence of covariates and errors by writing the conditional expectations as unconditional expectations, which can now be estimated by empirical plug-in estimators. The mean zero constraint on the error distribution is exploited by adding suit-able residual-based weights. We prove that the estimator is eff...
Missing data have become almost inevitable whenever data are collected. In this paper, interest is g...
International audienceWe consider building predictors when the data have missing values. We study th...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
We consider estimation of linear functionals of the joint law of regression models in which response...
We discuss efficient estimation in regression models that are de- fined by a finite-dimensional para...
A partially linear model is considered when the responses are missing at random. Imputation, semipar...
AbstractA partially linear model is considered when the responses are missing at random. Imputation,...
We propose a new class of models for making inference about the mean of a vector of repeated outcome...
We consider estimation of linear functionals of the error distribution for two regression models: pa...
International audienceA nonlinear model with response variables missing at random is studied. In ord...
We propose a residual-based empirical distribution function to estimate the distribution function o...
When responses are missing at random, we consider semiparametric estimation of inverse density weigh...
In a missing-data setting, we want to estimate the mean of a scalar outcome, based on a sample in wh...
We develop inference tools in a semiparametric regression model with missing response data. A semipa...
This article examines methods to efficiently estimate the mean response in a linear model with an un...
Missing data have become almost inevitable whenever data are collected. In this paper, interest is g...
International audienceWe consider building predictors when the data have missing values. We study th...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...
We consider estimation of linear functionals of the joint law of regression models in which response...
We discuss efficient estimation in regression models that are de- fined by a finite-dimensional para...
A partially linear model is considered when the responses are missing at random. Imputation, semipar...
AbstractA partially linear model is considered when the responses are missing at random. Imputation,...
We propose a new class of models for making inference about the mean of a vector of repeated outcome...
We consider estimation of linear functionals of the error distribution for two regression models: pa...
International audienceA nonlinear model with response variables missing at random is studied. In ord...
We propose a residual-based empirical distribution function to estimate the distribution function o...
When responses are missing at random, we consider semiparametric estimation of inverse density weigh...
In a missing-data setting, we want to estimate the mean of a scalar outcome, based on a sample in wh...
We develop inference tools in a semiparametric regression model with missing response data. A semipa...
This article examines methods to efficiently estimate the mean response in a linear model with an un...
Missing data have become almost inevitable whenever data are collected. In this paper, interest is g...
International audienceWe consider building predictors when the data have missing values. We study th...
In this paper, we carry out an in-depth theoretical investigation for inference with missing respons...