Given the effect that outliers can have on regression and specification testing, a vastly used robustification strategy by practitioners consists in: (i) starting the empirical analysis with an outlier detection procedure to deselect atypical data values; then (ii) continuing the analysis with the selected non-outlying observations. The repercussions of such robustifying procedure on the asymptotic properties of subsequent inferential procedures are, however, underexplored. We study the effects of such a strategy on testing for heteroscedasticity. Specifically, using weighted and marked empirical processes of residuals theory, we show that the White test implemented after the outlier detection and removal is asymptotically chi-square if the...
Dummy variables can be used to detect, validate and measure the impact of outliers in data. This pa...
There has been much debate in the literature regarding what to do with extreme or influential data p...
Outliers are sample values that cause surprise in relation to the majority of the sample. This is no...
Given the effect that outliers can have on regression and specification testing, a vastly used robus...
In this thesis, we study a “heuristic approach” that are frequently used for outlier robustness anal...
Problem statement: The problem of heteroscedasticity occurs in regression analysis for many practica...
In today’s society, statistical techniques are being used widely in education, medicine, social scie...
It is evident from the comments by Bernoulli (1777) that the history of outliers is very old and tra...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
Outlier removal is common in hormonal research. Here we investigated to what extent removing outlier...
We introduce asymptotic parameter-free hypothesis tests based on extreme value theory to detect outl...
Researchers often lack knowledge about how to deal with outliers when analyzing their data. Even mor...
The identification of asymmetric conditional heteroscedasticity is often based on samplecross-correl...
The presence of outliers can contribute to serious deviance in findings of statistical models. In th...
This paper analyzes the issue of testing for the presence of additive outliers when the variable stu...
Dummy variables can be used to detect, validate and measure the impact of outliers in data. This pa...
There has been much debate in the literature regarding what to do with extreme or influential data p...
Outliers are sample values that cause surprise in relation to the majority of the sample. This is no...
Given the effect that outliers can have on regression and specification testing, a vastly used robus...
In this thesis, we study a “heuristic approach” that are frequently used for outlier robustness anal...
Problem statement: The problem of heteroscedasticity occurs in regression analysis for many practica...
In today’s society, statistical techniques are being used widely in education, medicine, social scie...
It is evident from the comments by Bernoulli (1777) that the history of outliers is very old and tra...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
Outlier removal is common in hormonal research. Here we investigated to what extent removing outlier...
We introduce asymptotic parameter-free hypothesis tests based on extreme value theory to detect outl...
Researchers often lack knowledge about how to deal with outliers when analyzing their data. Even mor...
The identification of asymmetric conditional heteroscedasticity is often based on samplecross-correl...
The presence of outliers can contribute to serious deviance in findings of statistical models. In th...
This paper analyzes the issue of testing for the presence of additive outliers when the variable stu...
Dummy variables can be used to detect, validate and measure the impact of outliers in data. This pa...
There has been much debate in the literature regarding what to do with extreme or influential data p...
Outliers are sample values that cause surprise in relation to the majority of the sample. This is no...