We consider a robust version of the classical Wald test statistics for testing simple and composite null hypotheses for general parametric models. These test statistics are based on the minimum density power divergence estimators instead of the maximum likelihood estimators. An extensive study of their robustness properties is given though the influence functions as well as the chi-square inflation factors. It is theoretically established that the level and power of these robust tests are stable against outliers, whereas the classical Wald test breaks down. Some numerical examples confirm the validity of the theoretical results
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
In testing of hypothesis, the robustness of the tests is an important concern. Generally, the maximu...
We introduce robust tests for testing hypotheses in a general parametric model. These are robust ver...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
An important issue for robust inference is to examine the stability of the asymptotic level and powe...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
This chapter discusses the practical applications of bounded-influence tests. The robust versions of...
The Rao’s score, Wald and likelihood ratio tests are the most common procedures for testing hypothes...
We first review briefly some basic approaches to robust inference and discuss the role and the place...
The class of dual [phi]-divergence estimators (introduced in Broniatowski and Keziou (2009) [5]) is ...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...
We consider a robust version of the classical Wald test statistics for testing simple and composite ...
In testing of hypothesis, the robustness of the tests is an important concern. Generally, the maximu...
We introduce robust tests for testing hypotheses in a general parametric model. These are robust ver...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
An important issue for robust inference is to examine the stability of the asymptotic level and powe...
In this paper, a robust version of the Wald test statistic for composite likelihood is considered by...
This chapter discusses the practical applications of bounded-influence tests. The robust versions of...
The Rao’s score, Wald and likelihood ratio tests are the most common procedures for testing hypothes...
We first review briefly some basic approaches to robust inference and discuss the role and the place...
The class of dual [phi]-divergence estimators (introduced in Broniatowski and Keziou (2009) [5]) is ...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
In real life we often deal with independent but not identically distributed observations (i.n.i.d.o)...
We introduce a new family of Wald-type tests, based on minimum Rényi pseudodistance estimators, for ...
This paper shows that a test for heteroskedasticity within the context of classical linear regressio...