When dealing with situations in which the responses are discrete or show some type of asymmetry, the linear model is not appropriate to establish the relation between the responses and the covariates. Generalized linear models serve this purpose, since they allow one to model the mean of the responses through a link function, linearly on the covariates. When atypical observations are present in the sample, robust estimators are useful to provide fair estimations as well as to build outlier detection rules. The focus of this paper is to define robust estimators for the regression parameter when missing data possibly occur in the responses. The estimators introduced turn out to be consistent under mild conditions. In particular, resistant met...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
The Poisson maximum likelihood (PML) is used to estimate the coefficients of the Poisson regression ...
It is very important to make sure that a statistical data is free from outliers before making any ki...
In many situations, data follow a generalized linear model in which the mean of the responses is mo...
This paper focuses on nonparametric regression estimation for the parameters of a discrete or contin...
Observations which seem to deviate strongly from the main part of the data may occur in every statis...
Outlier detection algorithms are intimately connected with robust statistics that down-weight some o...
We consider the problem of estimating and detecting outliers in count time series data following a l...
In this thesis, we study a “heuristic approach” that are frequently used for outlier robustness anal...
Abstract: We consider the problem of estimating and detecting outliers in count time series data fol...
We study robust estimation of a log-linear Poisson model for count time series analysis. More specif...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
In ordinal response models residual diagnostics is not commonly used for detecting outliers because ...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
We consider the problems of robust estimation and testing for a log-linear model with feedback for t...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
The Poisson maximum likelihood (PML) is used to estimate the coefficients of the Poisson regression ...
It is very important to make sure that a statistical data is free from outliers before making any ki...
In many situations, data follow a generalized linear model in which the mean of the responses is mo...
This paper focuses on nonparametric regression estimation for the parameters of a discrete or contin...
Observations which seem to deviate strongly from the main part of the data may occur in every statis...
Outlier detection algorithms are intimately connected with robust statistics that down-weight some o...
We consider the problem of estimating and detecting outliers in count time series data following a l...
In this thesis, we study a “heuristic approach” that are frequently used for outlier robustness anal...
Abstract: We consider the problem of estimating and detecting outliers in count time series data fol...
We study robust estimation of a log-linear Poisson model for count time series analysis. More specif...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
In ordinal response models residual diagnostics is not commonly used for detecting outliers because ...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
We consider the problems of robust estimation and testing for a log-linear model with feedback for t...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
The Poisson maximum likelihood (PML) is used to estimate the coefficients of the Poisson regression ...
It is very important to make sure that a statistical data is free from outliers before making any ki...