We develop a unified L1-based analysis-of-variance-type method for testing linear hypotheses. Like the classical L2-based analysis of variance, the method is coordinate-free in the sense that it is invariant under any linear transformation of the covariates or regression parameters. Moreover, it allows singular design matrices and heterogeneous error terms. A simple approximation using stochastic perturbation is proposed to obtain cut-off values for the resulting test statistics. Both test statistics and distributional approximations can be computed using standard linear programming. An asymptotic theory is derived for the method. Special cases of one- and multi-way analysis of variance and analysis of covariance models are worked out in de...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
In this paper the authors present a nonparametric method of estimating the parameters of the linear ...
In this dissertation we will discuss two topics relevant to statistical analysis. The first is a new...
We develop a unified L-1-based analysis-of-variance-type method for testing linear hypotheses. Like ...
Asymptotic methods for testing linear hypotheses based on the L1-norm regression estimator have been...
AbstractIn this article, we consider the problem of testing a linear hypothesis in a multivariate li...
In this article, we consider the problem of testing a linear hypothesis in a multivariate linear reg...
SUMMARY. In this article we study the problem of testing for equality of variances of k independent ...
This is a theoretical study of the Least Absolute Deviations (LAD) fits. In the first part, fundamen...
We consider an L_1 analogue of the least squares estimate or for the parameters of stationary, finit...
This thesis is focused on the L1 regression, a possible alternative to the ordinary least squares re...
Algorithm for the exact solution of the problem of estimating the parameters of linear regression mo...
Econometricians generally take for granted that the error terms in the econometric models are genera...
Many people who do data analysis take only a few classes in statistics and hence, in general, get in...
summary:The paper presents some approximate and exact tests for testing variance components in gener...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
In this paper the authors present a nonparametric method of estimating the parameters of the linear ...
In this dissertation we will discuss two topics relevant to statistical analysis. The first is a new...
We develop a unified L-1-based analysis-of-variance-type method for testing linear hypotheses. Like ...
Asymptotic methods for testing linear hypotheses based on the L1-norm regression estimator have been...
AbstractIn this article, we consider the problem of testing a linear hypothesis in a multivariate li...
In this article, we consider the problem of testing a linear hypothesis in a multivariate linear reg...
SUMMARY. In this article we study the problem of testing for equality of variances of k independent ...
This is a theoretical study of the Least Absolute Deviations (LAD) fits. In the first part, fundamen...
We consider an L_1 analogue of the least squares estimate or for the parameters of stationary, finit...
This thesis is focused on the L1 regression, a possible alternative to the ordinary least squares re...
Algorithm for the exact solution of the problem of estimating the parameters of linear regression mo...
Econometricians generally take for granted that the error terms in the econometric models are genera...
Many people who do data analysis take only a few classes in statistics and hence, in general, get in...
summary:The paper presents some approximate and exact tests for testing variance components in gener...
AbstractThe null hypothesis that the error vectors in a multivariate linear model are independent is...
In this paper the authors present a nonparametric method of estimating the parameters of the linear ...
In this dissertation we will discuss two topics relevant to statistical analysis. The first is a new...