Bounded influence estimation (also known as generalized M or GM estimation) in the regression model is reviewed. The definitions of bounded influence estimation proposed by Mallows and Schweppe are then extended to the mixed linear model. This is achieved by applying appropriate weight functions to maximum likelihood and restricted maximum likelihood estimating equations. The asymptotic properties of the new estimators are obtained, and the estimators are applied to an artificial dataset. The article concludes with an extension of the example into a small simulation study designed to test some properties of the estimators in samples of moderate size. � 1997 Taylor & Francis Group, LLC
A gradient-like statistic recently introduced as an influence measure has been showed to work well i...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
This dissertation develops influence diagnostics for crossover models. Mixed linear models and gener...
AbstractWe investigate optimal bounded influence M-estimators in the general normal regression model...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
SUMMARY. We present asymptotic distributions of the Mallow′s type bounded-influence regression quant...
In the literature, many influence measures proposed for Generalized Linear Mixed Models (GLMMs) requ...
In a regression model with conditional heteroskedasticity of unknown form, we propose a general cla...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Since the seminal paper by Cook and ...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
The proliferation of many clinical studies obtaining multiple biophysical signals from several indiv...
This paper proposes a robust estimator for a general class of linear latent variable models (GLLVM) ...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
Ordinary Least Squares (OLS) estimator is widely used technique for estimating the regression coeffi...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
A gradient-like statistic recently introduced as an influence measure has been showed to work well i...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
This dissertation develops influence diagnostics for crossover models. Mixed linear models and gener...
AbstractWe investigate optimal bounded influence M-estimators in the general normal regression model...
We investigate optimal bounded influence M-estimators in the general normal regression model with re...
SUMMARY. We present asymptotic distributions of the Mallow′s type bounded-influence regression quant...
In the literature, many influence measures proposed for Generalized Linear Mixed Models (GLMMs) requ...
In a regression model with conditional heteroskedasticity of unknown form, we propose a general cla...
© 2016 Informa UK Limited, trading as Taylor & Francis Group. Since the seminal paper by Cook and ...
Biometrics 2001 Dec;57(4):1166-72 Related Articles, Books, LinkOut Local influence to detect influen...
The proliferation of many clinical studies obtaining multiple biophysical signals from several indiv...
This paper proposes a robust estimator for a general class of linear latent variable models (GLLVM) ...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
Ordinary Least Squares (OLS) estimator is widely used technique for estimating the regression coeffi...
In this paper we estimate the parameters of a regression model using S-estimators of multivariate lo...
A gradient-like statistic recently introduced as an influence measure has been showed to work well i...
This paper presents robust M-estimates based on the influence function approach for the multiple log...
This dissertation develops influence diagnostics for crossover models. Mixed linear models and gener...