The income or expenditure-related data sets are often nonlinear, heteroscedastic, skewed even after the transformation, and contain numerous outliers. We propose a class of robust nonlinear models that treat outlying observations effectively without removing them. For this purpose, case-specific parameters and a related penalty are employed to detect and modify the outliers systematically. We show how the existing nonlinear models such as smoothing splines and generalized additive models can be robustified by the case-specific parameters. Next, we extend the proposed methods to the heterogeneous models by incorporating unequal weights. The details of estimating the weights are provided. Two real data sets and simulated data sets show the po...
textabstractRegime-switching models, like the smooth transition autoregressive (STAR) model are typi...
textabstractThis book focuses on statistical methods for discriminating between competing models for...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
Outlying observations are often disregarded at the sacrifice of degrees of freedom or downsized via ...
Successful modeling of observational data requires jointly discovering the determinants of the under...
This research activity deals with robust methods for parameters estimation of nonlinear models and t...
In standard analyses of data well-modeled by a nonlinear mixed model, an aberrant observation, eithe...
The problems of outliers detection and robust regression in a high-dimensional setting are fundament...
This article addresses the issue of building regression models for bounded responses, which are robu...
In data analysis, contamination caused by outliers is inevitable, and robust statistical methods are...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
The ordinary Nonlinear Least Squares (NLLS) and the Maximum Likelihood Estimator (MLE) techniques ar...
We propose a stepwise procedure for the detection of multiple outliers in generalized linear models ...
Title: Robustification of statistical and econometrical regression methods Author: Mgr. Tomáš Jurczy...
textabstractRegime-switching models, like the smooth transition autoregressive (STAR) model are typi...
textabstractThis book focuses on statistical methods for discriminating between competing models for...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
Outlying observations are often disregarded at the sacrifice of degrees of freedom or downsized via ...
Successful modeling of observational data requires jointly discovering the determinants of the under...
This research activity deals with robust methods for parameters estimation of nonlinear models and t...
In standard analyses of data well-modeled by a nonlinear mixed model, an aberrant observation, eithe...
The problems of outliers detection and robust regression in a high-dimensional setting are fundament...
This article addresses the issue of building regression models for bounded responses, which are robu...
In data analysis, contamination caused by outliers is inevitable, and robust statistical methods are...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
The ordinary Nonlinear Least Squares (NLLS) and the Maximum Likelihood Estimator (MLE) techniques ar...
We propose a stepwise procedure for the detection of multiple outliers in generalized linear models ...
Title: Robustification of statistical and econometrical regression methods Author: Mgr. Tomáš Jurczy...
textabstractRegime-switching models, like the smooth transition autoregressive (STAR) model are typi...
textabstractThis book focuses on statistical methods for discriminating between competing models for...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...