Statistical problems in modelling personal income distributions include estimation procedures, testing and model choice. Typically, the parameters of a given model are estimated by classical procedures such as maximum likelihood and least squares estimators. Unfortunately, the classical methods are very sensitive to model derivations such as gross errors in the data, grouping effects or model misspecifications. These deviations can ruin the values of the estimators and inequality measures and can produce false information about the distribution of the personal income in a given country. In this paper we discuss the use of robust techniques for the estimation of income distributions. These methods behave as the classical procedures at the mo...
A model for measurement error is developed, based on the assumption that measurement error is random...
Numerical modelling of the personal income distribution (PID) in the USA from 1950 to 2003 is accomp...
This book presents a systematic overview of cutting-edge research in the field of parametric modelin...
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...
In the present thesis, robust statistical techniques are applied and developed for the economic prob...
Considerations related to income distribution and income inequalities in populations of economic age...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
With income distributions it is common to encounter the problem of missing data. When a parametric m...
We review the use and the interpretation of some robustness concepts and techniques in some economic...
With income distributions it is common to encounter the problem of missing data. When a parametric m...
Income distribution embeds a large field of research subjects in economics. It is important to study...
A model for measurement error is developed, based on the assumption that measurement error is random...
Numerical modelling of the personal income distribution (PID) in the USA from 1950 to 2003 is accomp...
This book presents a systematic overview of cutting-edge research in the field of parametric modelin...
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...
In the present thesis, robust statistical techniques are applied and developed for the economic prob...
Considerations related to income distribution and income inequalities in populations of economic age...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
An important aspect of income distribution is the modelling of the data using an appropriate paramet...
With income distributions it is common to encounter the problem of missing data. When a parametric m...
We review the use and the interpretation of some robustness concepts and techniques in some economic...
With income distributions it is common to encounter the problem of missing data. When a parametric m...
Income distribution embeds a large field of research subjects in economics. It is important to study...
A model for measurement error is developed, based on the assumption that measurement error is random...
Numerical modelling of the personal income distribution (PID) in the USA from 1950 to 2003 is accomp...
This book presents a systematic overview of cutting-edge research in the field of parametric modelin...