This paper compares the use of two posterior probability methods to deal with outliers in linear models. We show that putting together diagnostics that come from the mean-shift and variance-shift models yields a procedure that seems to be more effective than the use of probabilities computed from the posterior distributions of actual realized residuals. The relation of the suggested procedure to the use of a certain predictive distribution for diagnostics is derived
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
We propose a Bayesian procedure for multiple outlier detection in linear models avoiding the maskin...
In this paper, we experimentally evaluated the effect of outlier detection methods to improve the pr...
This paper compares the use of two posterior probability methods to deal with outliers in linear mod...
This paper introduces two new diagnostic tools: the Bayesian outlier curve (BOC) and the Sequential ...
This paper reviews models for the occurrence of outliers in data from the linear model. The Bayesian...
Abstract: An outlier is an observation that deviates markedly from the majority of the data. To know...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
228 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1982.Over the last several decades...
The detection of outliers for the standard least squares regression is a problem which has been exte...
Abstract. Outlier detection statistics based on two models, the case-deletion model and the mean-shi...
A variance shift outlier model (VSOM), previously used for detecting outliers in the linear model, i...
The problem of outliers in statistical data has attracted many researchers for a long time. Conseque...
contaminated with outliers that should be eliminated before estimation of the reference interval. A ...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
We propose a Bayesian procedure for multiple outlier detection in linear models avoiding the maskin...
In this paper, we experimentally evaluated the effect of outlier detection methods to improve the pr...
This paper compares the use of two posterior probability methods to deal with outliers in linear mod...
This paper introduces two new diagnostic tools: the Bayesian outlier curve (BOC) and the Sequential ...
This paper reviews models for the occurrence of outliers in data from the linear model. The Bayesian...
Abstract: An outlier is an observation that deviates markedly from the majority of the data. To know...
This thesis reviews various approaches for outlier detection problem. Several popularly used methods...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
228 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 1982.Over the last several decades...
The detection of outliers for the standard least squares regression is a problem which has been exte...
Abstract. Outlier detection statistics based on two models, the case-deletion model and the mean-shi...
A variance shift outlier model (VSOM), previously used for detecting outliers in the linear model, i...
The problem of outliers in statistical data has attracted many researchers for a long time. Conseque...
contaminated with outliers that should be eliminated before estimation of the reference interval. A ...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
We propose a Bayesian procedure for multiple outlier detection in linear models avoiding the maskin...
In this paper, we experimentally evaluated the effect of outlier detection methods to improve the pr...