This manuscript develops a general purpose inner-product norm for the Kendall \(\tau\) and Spearman's \(\rho\), which operates as an unbiased MLE even in the presence of ties. We derive and prove the strict sub-Gaussianity of the Kemeny norm-space, thereby disproving conclusions developed by both \textcite{kendall1948} and \textcite{diaconis1977} as to the nature of the appropriate, finite sample, probability distribution and test statistics. A non-parametric MLE framework for all bivariate pairs is developed, thereby resolving an hypothesis of \textcite{olkin1994} concerning an exponential multivariate distribution for order statistics, by showing that for finite samples, the distribution is non-exponential. Non-parametric linear estimator...
Consider the generalized growth curve model subject to R(Xm)[subset, double equals]...[subset, doubl...
Abstract We consider the problem of nonparametric estimation of d-dimensional probability density an...
spaces to unbounded sample sets. The motivation is to seek the most general pos-sible framework for ...
A popular nonparametric measure of a monotone relation between two variables is Kendall's tau. Origi...
On the basis of a random sample of size n on an m-dimensional random vector X, this note proposes a ...
Let Z1,..., Zn be a random sample of size n2 from a d-variate continuous distribution function H, an...
We construct minimum variance unbiased estimators of von Mises functionals in estimation problems wh...
A simple method is introduced for finding large sample, boundary-respecting confidence intervals (CI...
The problem of nonparametric estimation of the joint probability density of a vector of continuous a...
In many families of distributions, maximum likelihood estimation is intractable because the normaliz...
Nonparametric estimation of the copula function using Bernstein polynomials is studied. Convergence ...
This note provides a direct, elementary proof of the fundamental result on monotone likelihood ratio...
International audienceIn statistics, it is usually difficult to estimate the probability density fun...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
AbstractIn canonical correlation analysis the number of nonzero population correlation coefficients ...
Consider the generalized growth curve model subject to R(Xm)[subset, double equals]...[subset, doubl...
Abstract We consider the problem of nonparametric estimation of d-dimensional probability density an...
spaces to unbounded sample sets. The motivation is to seek the most general pos-sible framework for ...
A popular nonparametric measure of a monotone relation between two variables is Kendall's tau. Origi...
On the basis of a random sample of size n on an m-dimensional random vector X, this note proposes a ...
Let Z1,..., Zn be a random sample of size n2 from a d-variate continuous distribution function H, an...
We construct minimum variance unbiased estimators of von Mises functionals in estimation problems wh...
A simple method is introduced for finding large sample, boundary-respecting confidence intervals (CI...
The problem of nonparametric estimation of the joint probability density of a vector of continuous a...
In many families of distributions, maximum likelihood estimation is intractable because the normaliz...
Nonparametric estimation of the copula function using Bernstein polynomials is studied. Convergence ...
This note provides a direct, elementary proof of the fundamental result on monotone likelihood ratio...
International audienceIn statistics, it is usually difficult to estimate the probability density fun...
Linearity in a causal relationship between a dependent variable and a set of regressors is a common ...
AbstractIn canonical correlation analysis the number of nonzero population correlation coefficients ...
Consider the generalized growth curve model subject to R(Xm)[subset, double equals]...[subset, doubl...
Abstract We consider the problem of nonparametric estimation of d-dimensional probability density an...
spaces to unbounded sample sets. The motivation is to seek the most general pos-sible framework for ...