AbstractA general approach for developing distribution free tests for general linear models based on simplicial depth is applied to multiple regression. The tests are based on the asymptotic distribution of the simplicial regression depth, which depends only on the distribution law of the vector product of regressor variables. Based on this formula, the spectral decomposition and thus the asymptotic distribution is derived for multiple regression through the origin and multiple regression with Cauchy distributed explanatory variables. The errors may be heteroscedastic and the concrete form of the error distribution does not need to be known. Moreover, the asymptotic distribution for multiple regression with intercept does not depend on the ...
For a univariate distribution, its M-quantiles are obtained as solutions to asymmetric minimization ...
The classical sign test usually provides very bad power for certain alternatives. We present a gene...
Classical multivariate statistics measures the outlyingness of a point by its Mahalanobis distance f...
AbstractA general approach for developing distribution free tests for general linear models based on...
We simplify simplicial depth for regression and autoregressive growth processes in two directions. ...
The extension of simplicial depth to robust regression, the so-called simplicial regression depth, ...
A general approach for developing distribution-free tests for general linear models based on simplic...
AbstractGlobal depth, tangent depth and simplicial depths for classical and orthogonal regression ar...
In this paper we present the maximum simplicial depth estimator and compare it to the ordinary least...
ABSTRACT. In this paper we present the maximum simplicial depth estimator and compare it to the ordi...
A method is developed and studied for testing equality of variances based on simplicial data depth a...
A fast algorithm for calculating the simplicial depth of a single parameter vector of a polynomial r...
In this paper we present the maximum simplicial depth estimator and compare it to the ordinary least...
For a univariate distribution, its M-quantiles are obtained as solutions to asymmetric minimization ...
A new multivariate concept of quantile, based on a directional version of Koenker and Bassett s trad...
For a univariate distribution, its M-quantiles are obtained as solutions to asymmetric minimization ...
The classical sign test usually provides very bad power for certain alternatives. We present a gene...
Classical multivariate statistics measures the outlyingness of a point by its Mahalanobis distance f...
AbstractA general approach for developing distribution free tests for general linear models based on...
We simplify simplicial depth for regression and autoregressive growth processes in two directions. ...
The extension of simplicial depth to robust regression, the so-called simplicial regression depth, ...
A general approach for developing distribution-free tests for general linear models based on simplic...
AbstractGlobal depth, tangent depth and simplicial depths for classical and orthogonal regression ar...
In this paper we present the maximum simplicial depth estimator and compare it to the ordinary least...
ABSTRACT. In this paper we present the maximum simplicial depth estimator and compare it to the ordi...
A method is developed and studied for testing equality of variances based on simplicial data depth a...
A fast algorithm for calculating the simplicial depth of a single parameter vector of a polynomial r...
In this paper we present the maximum simplicial depth estimator and compare it to the ordinary least...
For a univariate distribution, its M-quantiles are obtained as solutions to asymmetric minimization ...
A new multivariate concept of quantile, based on a directional version of Koenker and Bassett s trad...
For a univariate distribution, its M-quantiles are obtained as solutions to asymmetric minimization ...
The classical sign test usually provides very bad power for certain alternatives. We present a gene...
Classical multivariate statistics measures the outlyingness of a point by its Mahalanobis distance f...