Nonparametric correlation measures at the Kendall and Spearman correlation are widely used in the behavioral sciences. These measures are often said to be robust, in the sense of being resistant to outlying observations. In this note we formally study their robustness by means of their influence functions. Since robustness of an estimator often comes at the price of a loss inprecision, we compute efficiencies at the normal model. A comparison with robust correlation measures derived from robust covariance matrices is made. We conclude that both Spearman and Kendall correlation measures combine good robustness properties with high efficiency.nrpages: 1-24status: publishe
Abstract: Several approaches for robust canonical correlation analysis will be presented and discuss...
The power of statistical tests based on four popular product-moment correlation coefficients was ex...
Pearson correlation coefficient is the most widely used statistical technique when measuring a relat...
Nonparametric correlation estimators as the Kendall and Spearman correlation are widely used in the ...
In this paper, we investigate the robustness of some well known correlation coefficients, namely, Pe...
A necessary and sufficient condition for Pitman’s asymptotic relative efficiency of the Kendall and ...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
The objective of this research was to propose a composite correlation coefficient to estimate the ra...
In the correlation model, the classical coefficient of multiple determination 2 is a measure of asso...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
A necessary and suffcient condition for Pitman's asymptotic relative effciency (ARE) of the Kendall ...
Several approaches for robust canonical correlation analysis will be presented and discussed. A firs...
Several approaches for robust canonical correlation analysis will be presented and discussed. A firs...
A class of naive estimators of correlation was tested for robustness, accuracy, and efficiency aga...
We examine the performance of the two rank order correlation coefficients (Spearman's rho and Kendal...
Abstract: Several approaches for robust canonical correlation analysis will be presented and discuss...
The power of statistical tests based on four popular product-moment correlation coefficients was ex...
Pearson correlation coefficient is the most widely used statistical technique when measuring a relat...
Nonparametric correlation estimators as the Kendall and Spearman correlation are widely used in the ...
In this paper, we investigate the robustness of some well known correlation coefficients, namely, Pe...
A necessary and sufficient condition for Pitman’s asymptotic relative efficiency of the Kendall and ...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
The objective of this research was to propose a composite correlation coefficient to estimate the ra...
In the correlation model, the classical coefficient of multiple determination 2 is a measure of asso...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
A necessary and suffcient condition for Pitman's asymptotic relative effciency (ARE) of the Kendall ...
Several approaches for robust canonical correlation analysis will be presented and discussed. A firs...
Several approaches for robust canonical correlation analysis will be presented and discussed. A firs...
A class of naive estimators of correlation was tested for robustness, accuracy, and efficiency aga...
We examine the performance of the two rank order correlation coefficients (Spearman's rho and Kendal...
Abstract: Several approaches for robust canonical correlation analysis will be presented and discuss...
The power of statistical tests based on four popular product-moment correlation coefficients was ex...
Pearson correlation coefficient is the most widely used statistical technique when measuring a relat...