This paper presents a robust two-stage procedure for identification of outlying observations in regression analysis. The exploratory stage identifies leverage points and vertical outliers through a robust distance estimator based on Minimum Covariance Determinant (MCD). After deletion of these points, the confirmatory stage carries out an Ordinary Least Squares (OLS) analysis on the remaining subset of data and investigates the effect of adding back in the previously deleted observations. Cut-off points pertinent to different diagnostics are generated by bootstrapping and the cases are definitely labelled as good-leverage, bad-leverage, vertical outliers and typical cases. The procedure is applied to four examples
High leverage points are observations that have outlying values in covariate space. In logistic regr...
Problem statement: High leverage points are extreme outliers in the X-direction. In regression analy...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
<p>This paper presents a robust two-stage procedure for identification of outlying observations in r...
Identification and assessment of outliers have a key role in Ordinary Least Squares (OLS) regression...
Parallel to the development in regression diagnosis, this paper de-fines good and bad leverage obser...
Outlier detection is a critical part of data analysis, and the use of Studentized residuals from reg...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The problem of selecting a parsimonious subset of variables from a large number of predictors in a r...
Logistic regression is well known to the data mining research community as a tool for modeling and c...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The strong impact of outliers and leverage points on the ordinary least square (OLS) regression esti...
Abstract This paper describes a procedure for identifying multiple outliers in linear regression. Th...
Outliers with respect to the predictor variables are called high leverage points. The observations t...
In a standard linear regression model the explanatory variables, , are considered to be fixed and he...
High leverage points are observations that have outlying values in covariate space. In logistic regr...
Problem statement: High leverage points are extreme outliers in the X-direction. In regression analy...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
<p>This paper presents a robust two-stage procedure for identification of outlying observations in r...
Identification and assessment of outliers have a key role in Ordinary Least Squares (OLS) regression...
Parallel to the development in regression diagnosis, this paper de-fines good and bad leverage obser...
Outlier detection is a critical part of data analysis, and the use of Studentized residuals from reg...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The problem of selecting a parsimonious subset of variables from a large number of predictors in a r...
Logistic regression is well known to the data mining research community as a tool for modeling and c...
Determining if a dataset has one or more outliers is a fundamental and challenging problem in statis...
The strong impact of outliers and leverage points on the ordinary least square (OLS) regression esti...
Abstract This paper describes a procedure for identifying multiple outliers in linear regression. Th...
Outliers with respect to the predictor variables are called high leverage points. The observations t...
In a standard linear regression model the explanatory variables, , are considered to be fixed and he...
High leverage points are observations that have outlying values in covariate space. In logistic regr...
Problem statement: High leverage points are extreme outliers in the X-direction. In regression analy...
We propose a new procedure for computing an approximation to regression estimates based on the minim...