A new matching procedure based on imputing missing data by means of a local linear estimator of the underlying population regression function (that is assumed not necessarily linear) is introduced. Such a procedure is compared to other traditional approaches, more precisely hot deck methods as well as methods based on kNN estimators. The relationship between the variables of interest is assumed not necessarily linear. Performance is measured by the matching noise given by the discrepancy between the distribution generating genuine data and the distribution generating imputed values
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
The problem of imputing missing observations under the linear regression model is considered. It is ...
We present single imputation method for missing values which borrows the idea of data depth—a measur...
A new matching procedure based on imputing missing data by means of a local linear estimator of the...
In this paper, the difference between the data generating process and the imputation procedures used...
The aim of the paper is to evaluate the matching noise produced by nonparametric imputation techniqu...
Dealing with missing data via parametric multiple imputation methods usually implies stating several...
A nonparametric impotation method for statistical matching is introduced, and its properties are stu...
Statistical matching attempts at producing a unique, synthetic data file, where variables observed i...
The aim of this paper is to provide an introduction of new imputation algorithms for estimating mis...
Sometimes, the integration of different data sources is the only suitable solution to microdata shor...
International audienceThe presented methodology for single imputation of missing values borrows the ...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
AbstractThe problem of imputing missing observations under the linear regression model is considered...
Missing data in survey research occurs from unit nonresponse or item nonresponse. Unit nonresponse i...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
The problem of imputing missing observations under the linear regression model is considered. It is ...
We present single imputation method for missing values which borrows the idea of data depth—a measur...
A new matching procedure based on imputing missing data by means of a local linear estimator of the...
In this paper, the difference between the data generating process and the imputation procedures used...
The aim of the paper is to evaluate the matching noise produced by nonparametric imputation techniqu...
Dealing with missing data via parametric multiple imputation methods usually implies stating several...
A nonparametric impotation method for statistical matching is introduced, and its properties are stu...
Statistical matching attempts at producing a unique, synthetic data file, where variables observed i...
The aim of this paper is to provide an introduction of new imputation algorithms for estimating mis...
Sometimes, the integration of different data sources is the only suitable solution to microdata shor...
International audienceThe presented methodology for single imputation of missing values borrows the ...
Missing data is an important issue in almost all fields of quantitative research. A nonparametric pr...
AbstractThe problem of imputing missing observations under the linear regression model is considered...
Missing data in survey research occurs from unit nonresponse or item nonresponse. Unit nonresponse i...
A new nonparametric technique to impute missing data is proposed in order to obtain a completed data...
The problem of imputing missing observations under the linear regression model is considered. It is ...
We present single imputation method for missing values which borrows the idea of data depth—a measur...