We propose a bootstrap approach to gauging the size of regression influence measures. The bootstrap cut-offs generated are based on approximating the sampling distribution of the respective measures under resampling, work well for small samples, and allow for features such as asymmetric cut-offs. The bootstrap method uses Efron's jackknife-after-bootstrap idea to deal with the issue of an influential point contaminating the resamples from which cut-offs are calculated. The method is illustrated through both real-world examples and a simulation study, the results of which suggest that the bootstrap method provides a reliable alternative to traditional methods particularly in small to moderate samples
Bootstrap tests are tests for which the significance level is calculated by some sort of bootstrap p...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...
The jackknife-after-bootstrap (JaB) method has been proposed for detecting influential observations ...
In this study, we adapt sufficient bootstrap into the jackknife-after-bootstrap (JaB) algorithm. The...
North-West University, Potchefstroom CampusMSc (Mathematical Statistics), North-West University, Pot...
Abstract: In this paper, the hierarchical ways for building a regression model by using bootstrap an...
Since its introduction by Efron [1], the bootstrap has been the object of research in statistics. We...
• There is a vast literature on robust estimators, but in some situations it is still not easy to ma...
A computer-intensive method for estimating small sample statistics and obtaining confidence interval...
The influence of observations on the outcome of an analysis is of importance in statistical data ana...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
AbstractB. Efron introducedjackknife-after-bootstrapas a computationally efficient method for estima...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
<div><p>Critical to any regression analysis is the identification of observations that exert a stron...
Bootstrap tests are tests for which the significance level is calculated by some sort of bootstrap p...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...
The jackknife-after-bootstrap (JaB) method has been proposed for detecting influential observations ...
In this study, we adapt sufficient bootstrap into the jackknife-after-bootstrap (JaB) algorithm. The...
North-West University, Potchefstroom CampusMSc (Mathematical Statistics), North-West University, Pot...
Abstract: In this paper, the hierarchical ways for building a regression model by using bootstrap an...
Since its introduction by Efron [1], the bootstrap has been the object of research in statistics. We...
• There is a vast literature on robust estimators, but in some situations it is still not easy to ma...
A computer-intensive method for estimating small sample statistics and obtaining confidence interval...
The influence of observations on the outcome of an analysis is of importance in statistical data ana...
We propose two novel diagnostic measures for the detection of influential observations for regressio...
AbstractB. Efron introducedjackknife-after-bootstrapas a computationally efficient method for estima...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
<div><p>Critical to any regression analysis is the identification of observations that exert a stron...
Bootstrap tests are tests for which the significance level is calculated by some sort of bootstrap p...
Diagnostic methods have been an important tool in regression analysis to detect anomalies, such as d...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...