This chapter discusses the practical applications of bounded-influence tests. The robust versions of classical likelihood ratio, Wald or score tests, are now available in a general setting. They are more reliable than their classical counterparts—that is, they are not influenced by small deviations from the underlying model and can also be used as useful diagnostic tools to identify influential or outlying data points. The chapter illustrates their performance to show that they can be easily implemented in different practical situations. They can be used to robustly choose a model when the hypotheses are non-nested. That is when the model under the null hypothesis cannot be obtained as a particular or limiting case of the model under the al...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
We introduce robust tests for testing hypotheses in a general parametric model. These are robust ver...
We first review briefly some basic approaches to robust inference and discuss the role and the place...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
An important issue for robust inference is to examine the stability of the asymptotic level and powe...
[[abstract]]This article introduces two parametric robust diagnostic methods for detecting influenti...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
[[abstract]]This article introduces two parametric robust diagnostic methods for detecting influenti...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
The local robustness properties of generalized method of moments (GMM) estimators and of a broad cla...
This article studies the local robustness of estimators and tests for the conditional location and s...
We consider three general classes of data-driven statistical tests. Neyman's smooth tests, data-driv...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...
We introduce robust tests for testing hypotheses in a general parametric model. These are robust ver...
We first review briefly some basic approaches to robust inference and discuss the role and the place...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
An important issue for robust inference is to examine the stability of the asymptotic level and powe...
[[abstract]]This article introduces two parametric robust diagnostic methods for detecting influenti...
Logistic regression is frequently used for classifying observations into two groups. Unfortunately t...
[[abstract]]This article introduces two parametric robust diagnostic methods for detecting influenti...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
The local robustness properties of generalized method of moments (GMM) estimators and of a broad cla...
This article studies the local robustness of estimators and tests for the conditional location and s...
We consider three general classes of data-driven statistical tests. Neyman's smooth tests, data-driv...
peer reviewedLogistic regression is frequently used for classifying observations into two groups. Un...
In this paper robustness properties of the maximum likelihood estimator (MLE) and several robust est...
Logistic regression is a widely used tool designed to model the success probability of a Bernoulli r...