The maximum association between two multivariate variables X and Y is defined as the maximal value that a bivariate association measure between one-dimensional projections αX and αY can attain. Taking the Pearson correlation as projection index results in the first canonical correlation coefficient. We propose to use more robust association measures, such as Spearman’s or Kendall’s rank correlation, or association measures derived from bivariate scatter matrices. We study the robustness of the proposed maximum association measures and the corresponding estimators of the coefficients yielding the maximum association. In the important special case of Y being univariate, maximum rank correlation estimators yield regression estimators that are ...
© 2017 IEEE. We introduce Network Maximal Correlation (NMC) as a multivariate measure of nonlinear a...
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...
The maximum association between two multivariate variables X and Y is defined as the maximal value t...
The maximum association between two multivariate variables X and Y is defined as the maximal value t...
The objective of this research was to propose a composite correlation coefficient to estimate the ra...
Han’s maximum rank correlation (MRC) estimator is shown to be√ n-consistent and asymptotically norma...
In the correlation model, the classical coefficient of multiple determination 2 is a measure of asso...
We propose a new estimator, called the Generalized Maximum Rank Correlation Estimator (GMRC), of the...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
This paper presents a nonparametric and distribution-free estimator for the function h*, of observab...
Generalized varying coefficient models (GVCMs) form a family of statistical utilities that are appli...
A class of examples concerning the relationship of linear regression and max-imal correlation is pro...
We examine the performance of the two rank order correlation coefficients (Spearman's rho and Kendal...
© 2017 IEEE. We introduce Network Maximal Correlation (NMC) as a multivariate measure of nonlinear a...
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...
The maximum association between two multivariate variables X and Y is defined as the maximal value t...
The maximum association between two multivariate variables X and Y is defined as the maximal value t...
The objective of this research was to propose a composite correlation coefficient to estimate the ra...
Han’s maximum rank correlation (MRC) estimator is shown to be√ n-consistent and asymptotically norma...
In the correlation model, the classical coefficient of multiple determination 2 is a measure of asso...
We propose a new estimator, called the Generalized Maximum Rank Correlation Estimator (GMRC), of the...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
This paper presents a nonparametric and distribution-free estimator for the function h*, of observab...
Generalized varying coefficient models (GVCMs) form a family of statistical utilities that are appli...
A class of examples concerning the relationship of linear regression and max-imal correlation is pro...
We examine the performance of the two rank order correlation coefficients (Spearman's rho and Kendal...
© 2017 IEEE. We introduce Network Maximal Correlation (NMC) as a multivariate measure of nonlinear a...
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...