The weighed total least square (WTLS) estimate is very sensitive to the outliers in the partial EIV model. A new procedure for detecting outliers based on the data-snooping is presented in this paper. Firstly, a two-step iterated method of computing the WTLS estimates for the partial EIV model based on the standard LS theory is proposed. Secondly, the corresponding w-test statistics are constructed to detect outliers while the observations and coefficient matrix are contaminated with outliers, and a specific algorithm for detecting outliers is suggested. When the variance factor is unknown, it may be estimated by the least median squares (LMS) method. At last, the simulated data and real data about two-dimensional affine transformation are ...
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...
A variance shift outlier model (VSOM), previously used for detecting outliers in the linear model, i...
The weighed total least square (WTLS) estimate is very sensitive to the outliers in the partial EIV ...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
The weighted total least-squares (WTLS) estimate for the partial errors-in-variables (EIV) model is ...
Abstract: An outlier is an observation that deviates markedly from the majority of the data. To know...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
In this paper we propose a method for correctly detecting outliers based on a new technique develope...
Outlier detection algorithms are intimately connected with robust statistics that down-weight some o...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The present paper focuses on the theory of outlier detection in least-squares adjustment. Although t...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The presence of outliers can result in seriously biased parameter estimates. In order to detect outl...
In the last decades many statistical tests based on the least squares solution have been proposed fo...
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...
A variance shift outlier model (VSOM), previously used for detecting outliers in the linear model, i...
The weighed total least square (WTLS) estimate is very sensitive to the outliers in the partial EIV ...
Regression analysis is one of the most important branches of multivariate statistical techniques. It...
The weighted total least-squares (WTLS) estimate for the partial errors-in-variables (EIV) model is ...
Abstract: An outlier is an observation that deviates markedly from the majority of the data. To know...
In this paper, we present a new algorithm for detecting multiple outliers in linear regression. The ...
In this paper we propose a method for correctly detecting outliers based on a new technique develope...
Outlier detection algorithms are intimately connected with robust statistics that down-weight some o...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The present paper focuses on the theory of outlier detection in least-squares adjustment. Although t...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The presence of outliers can result in seriously biased parameter estimates. In order to detect outl...
In the last decades many statistical tests based on the least squares solution have been proposed fo...
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...
A variance shift outlier model (VSOM), previously used for detecting outliers in the linear model, i...