We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996. Prediction and asymptotics. Bernoulli 2, 319-340] and Vidoni [1998. A note on modified estimative prediction limits and distributions. Biometrika 85, 949-953], we propose improved prediction limits based on M-estimators. To compute them, the expressions of the bias and variance of an M-estimator are required. In view of this, a general asymptotic approximation for the bias of an M-estimator is derived. Moreover, by means of comparative studies in the context of affine transformation models, we show that the proposed robust procedure for prediction can be successfully used in a parametric setting.Bias Influence function Prediction Robustness...
Many applications consecrate the use of asymmetric distributions, and practical situations often req...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
For the approximately linear model Yi, ~ = /~z(xi) + n-1/2fn(xi) + el, with i.i.d, errors ei and fi...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
Nonlinear regression problems can often be reduced to linearity by transforming the response variabl...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
The effects of over- and underfitting the regression model is studied for M-estimators. Applying now...
In this paper we derive the change-of-variance function of M-estimators of scale under general conta...
AbstractIn this paper we derive the change-of-variance function of M-estimators of scale under gener...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
AbstractWe investigate optimal bounded influence M-estimators in the general normal regression model...
Several problems emerging with the studentization of M-estimators of regression model are briefly di...
We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its perfor...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
This thesis focuses on the concept of predictive distributions and bias calibration. At first, an ex...
Many applications consecrate the use of asymmetric distributions, and practical situations often req...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
For the approximately linear model Yi, ~ = /~z(xi) + n-1/2fn(xi) + el, with i.i.d, errors ei and fi...
We discuss a robust solution to the problem of prediction. Extending Barndorff-Nielsen and Cox [1996...
Nonlinear regression problems can often be reduced to linearity by transforming the response variabl...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
The effects of over- and underfitting the regression model is studied for M-estimators. Applying now...
In this paper we derive the change-of-variance function of M-estimators of scale under general conta...
AbstractIn this paper we derive the change-of-variance function of M-estimators of scale under gener...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
AbstractWe investigate optimal bounded influence M-estimators in the general normal regression model...
Several problems emerging with the studentization of M-estimators of regression model are briefly di...
We define a new Bayesian predictor called the posterior weighted median (PWM) and compare its perfor...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
This thesis focuses on the concept of predictive distributions and bias calibration. At first, an ex...
Many applications consecrate the use of asymmetric distributions, and practical situations often req...
AbstractAsymptotics of M-estimators of the regression coefficients in linear models (both scale-vari...
For the approximately linear model Yi, ~ = /~z(xi) + n-1/2fn(xi) + el, with i.i.d, errors ei and fi...