This paper presents robust M-estimates based on the influence function approach for the multiple logistic regression model. Under the assumption that the sequence of distributions corresponding to the contaminated models is contiguous to the pure model, the asymptotic normality of these estimators is determined. The optimal influence function is found as the analytical solution of the minimax problem, that is by minimizing the mean-squared deviance for worst-case contamination. A numerical implementation is given with the performance of the proposed robust estimators evaluated both in a simulation study and with two real datasets.13 page(s
In the context of polytomous regression, as with any generalized linear model, robustness issues are...
It is well known that the maximum likelihood fit of the logistic regression parameters can be greatl...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
The paper discusses the effect of model deviations such as data contamination on the maximum likelih...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...
In this paper we aim to deepen our understanding of the behaviour of robust methods in logistic regr...
In this paper we consider a suitable scale adjustment of the estimating function which de.nes a clas...
AbstractWe investigate optimal bounded influence M-estimators in the general normal regression model...
It is now evident that the estimation of logistic regression parameters, using Maximum LikelihoodEst...
In the context of polytomous regression, as with any generalized linear model, robustness issues are...
It is well known that the maximum likelihood fit of the logistic regression parameters can be greatl...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
The paper discusses the effect of model deviations such as data contamination on the maximum likelih...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...
In this paper we aim to deepen our understanding of the behaviour of robust methods in logistic regr...
In this paper we consider a suitable scale adjustment of the estimating function which de.nes a clas...
AbstractWe investigate optimal bounded influence M-estimators in the general normal regression model...
It is now evident that the estimation of logistic regression parameters, using Maximum LikelihoodEst...
In the context of polytomous regression, as with any generalized linear model, robustness issues are...
It is well known that the maximum likelihood fit of the logistic regression parameters can be greatl...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...