We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are replaced with robust estimators. The latter may unmask outliers and hence improve the power of the test. We investigate in detail the local asymptotic power of the IM test in the normal model, for various estimators and under a range of local alternatives. These local alternatives include contamination neighbourhoods, Student's t-distribution (with degrees of freedom approaching infinity), skewness, and a tilted normal. Simulation studies for fixed alternatives confirm that in many cases the use of robust estimators substantially increases the power of the IM test.Information; Matrix; Studies; Maximum likelihood; Outliers; Model; Simulation;
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
Background and Objective: The performance of classical Jennrich (J) statistic using classical estima...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM e...
We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are re...
We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are re...
Information matrix (IM) test (White, 1982) has been used for detecting general model misspecificatio...
In this paper we provide considerable Monte Carlo evidence on the finite sample performance of sever...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...
We study the problem of performing statistical inference based on robust esti-mates when the distrib...
This paper investigates the effects of using residuals from robust regression in place of OLS residu...
National audienceThis paper considers the problem of inference in a linear regression model with out...
This article proposes a new test that is consistent, achieves correct asymptotic size, and is locall...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
We study the problem of performing statistical inference based on robust estimates when the distrib...
A preeminent expert in the field explores new and exciting methodologies in the ever-growing field o...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
Background and Objective: The performance of classical Jennrich (J) statistic using classical estima...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM e...
We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are re...
We study the behaviour of the information matrix (IM) test when maximum likelihood estimators are re...
Information matrix (IM) test (White, 1982) has been used for detecting general model misspecificatio...
In this paper we provide considerable Monte Carlo evidence on the finite sample performance of sever...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...
We study the problem of performing statistical inference based on robust esti-mates when the distrib...
This paper investigates the effects of using residuals from robust regression in place of OLS residu...
National audienceThis paper considers the problem of inference in a linear regression model with out...
This article proposes a new test that is consistent, achieves correct asymptotic size, and is locall...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
We study the problem of performing statistical inference based on robust estimates when the distrib...
A preeminent expert in the field explores new and exciting methodologies in the ever-growing field o...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
Background and Objective: The performance of classical Jennrich (J) statistic using classical estima...
We propose a class of robust estimates for multivariate linear models. Based on the approach of MM e...