In regression analysis, the presence of outliers in the data set can strongly distort the classical least squares estimator and lead to unreliable results. To deal with this, several robust-to-outliers methods have been proposed in the statistical literature. In Stata, some of these methods are available through the commands rreg and qreg. Unfortunately, these methods only resist to some specific types of outliers and turn out to be ineffective under alternative scenarios. In this paper we present more effective robust estimators that we implemented in Stata. We also present a graphical tool that allows recognizing the type of existing outliers
In the case of multicollinearity and outliers in regression analysis, the researchers are encouraged...
Abstract: Robust methods are little applied (although much studied by statisticians). We monitor ver...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...
In regression analysis, the presence of outliers in the dataset can strongly distort the classical l...
Abstract. In regression analysis, the presence of outliers in the data set can strongly distort the ...
Robust methods are little applied (although much studied by statisticians). We monitor very robust r...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
The classical instrumental-variables estimator is extremely sensitive to the presence of outliers in...
The classical instrumental-variables estimator is extremely sensitive to the presence of outliers in...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
In empirical studies often the values of some variables for some observations are much larger or sma...
The problem of selecting a parsimonious subset of variables from a large number of predictors in a r...
In this paper we propose a method for correctly detecting outliers based on a new technique develope...
Four approaches to linear robust regression analysis are presented. In the presence of outliers or b...
Outlier identification is important in many applications of multivariate analysis. Either because th...
In the case of multicollinearity and outliers in regression analysis, the researchers are encouraged...
Abstract: Robust methods are little applied (although much studied by statisticians). We monitor ver...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...
In regression analysis, the presence of outliers in the dataset can strongly distort the classical l...
Abstract. In regression analysis, the presence of outliers in the data set can strongly distort the ...
Robust methods are little applied (although much studied by statisticians). We monitor very robust r...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
The classical instrumental-variables estimator is extremely sensitive to the presence of outliers in...
The classical instrumental-variables estimator is extremely sensitive to the presence of outliers in...
We propose a new procedure for computing an approximation to regression estimates based on the minim...
In empirical studies often the values of some variables for some observations are much larger or sma...
The problem of selecting a parsimonious subset of variables from a large number of predictors in a r...
In this paper we propose a method for correctly detecting outliers based on a new technique develope...
Four approaches to linear robust regression analysis are presented. In the presence of outliers or b...
Outlier identification is important in many applications of multivariate analysis. Either because th...
In the case of multicollinearity and outliers in regression analysis, the researchers are encouraged...
Abstract: Robust methods are little applied (although much studied by statisticians). We monitor ver...
We propose a procedure for computing a fast approximation to regression estimates based on the minim...