With income distributions it is common to encounter the problem of missing data. When a parametric model is fitted to the data, the problem can be overcome by specifying the marginal distribution of the observed data. With classical methods of estimation such as the maximum likelihood (ML) an estimator of the parameters can be obtained in a straightforward manner. Unfortunately, it is well known that ML estimators are not robust estimators in the presence of contaminated data. In this paper, we propose a robust alternative to the ML estimator with truncated data, namely one based on Mestimators that we call the EMM estimator. We present an extensive simulation study where the EMM estimator based on optimal B-robust estimators (OBRE) is comp...
In the present thesis, robust statistical techniques are applied and developed for the economic prob...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
With income distributions it is common to encounter the problem of missing data. When a parametric m...
Statistical problems in modelling personal income distributions include estimation procedures, testi...
Statistical problems in modelling personal income distributions include estimation procedures, testi...
Statistical problems in modelling personal-income distributions include estimation procedures, testi...
Statistical problems in modelling personal income distributions include estimation procedures, testi...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We propose an estimator that is more robust than doubly robust estimators, based on weighting comple...
The information matrix (IM) equality can be used to test for misspecification of a parametric model....
In the present thesis, robust statistical techniques are applied and developed for the economic prob...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
With income distributions it is common to encounter the problem of missing data. When a parametric m...
Statistical problems in modelling personal income distributions include estimation procedures, testi...
Statistical problems in modelling personal income distributions include estimation procedures, testi...
Statistical problems in modelling personal-income distributions include estimation procedures, testi...
Statistical problems in modelling personal income distributions include estimation procedures, testi...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
A broadly applicable algorithm for computing maximum likelihood estimates from incomplete data is pr...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We consider maximum likelihood (ML) estimation of mean and covariance structure models when data are...
We propose an estimator that is more robust than doubly robust estimators, based on weighting comple...
The information matrix (IM) equality can be used to test for misspecification of a parametric model....
In the present thesis, robust statistical techniques are applied and developed for the economic prob...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...