Dealing with missing data via parametric multiple imputation methods usually implies stating several strong assumptions both about the distribution of the data and about underlying regression relationships. If such parametric assumptions do not hold, the multiply imputed data are not appropriate and might produce inconsistent estimators and thus misleading results. In this paper, a fully nonparametric and a semiparametric imputation method are studied, both based on local resampling principles. It is shown that the final estimator, based on these local imputations, is consistent under fewer or no parametric assumptions. Asymptotic expressions for bias, variance and mean squared error are derived, showing the theoretical impact of the differ...
We present single imputation method for missing values which borrows the idea of data depth—a measur...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
This paper considers the problem of parameter estimation in a general class of semiparametric models...
AbstractThe problem of imputing missing observations under the linear regression model is considered...
The problem of imputing missing observations under the linear regression model is considered. It is ...
Rubin (1987) has proposed multiple imputations as a general method for estimation in the presence of...
Rubin (1987) has proposed multiple imputations as a general method for estimation in the presence of...
A new matching procedure based on imputing missing data by means of a local linear estimator of the...
Nonresponse is a pervasive and persistent problem in survey data. This research reviews several meth...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
International audienceThe presented methodology for single imputation of missing values borrows the ...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Iterative multiple imputation is a popular technique for missing data analysis. It updates the param...
We present single imputation method for missing values which borrows the idea of data depth—a measur...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
This paper considers the problem of parameter estimation in a general class of semiparametric models...
AbstractThe problem of imputing missing observations under the linear regression model is considered...
The problem of imputing missing observations under the linear regression model is considered. It is ...
Rubin (1987) has proposed multiple imputations as a general method for estimation in the presence of...
Rubin (1987) has proposed multiple imputations as a general method for estimation in the presence of...
A new matching procedure based on imputing missing data by means of a local linear estimator of the...
Nonresponse is a pervasive and persistent problem in survey data. This research reviews several meth...
Multiple imputation (MI) is a commonly applied method of statistically handling missing data. It inv...
International audienceThe presented methodology for single imputation of missing values borrows the ...
Abstract In multiple imputation, the resulting estimates are consistent if the im-putation model is ...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
Iterative multiple imputation is a popular technique for missing data analysis. It updates the param...
We present single imputation method for missing values which borrows the idea of data depth—a measur...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
This paper considers the problem of parameter estimation in a general class of semiparametric models...