AbstractThe Moore–Penrose inverse of a singular or nonsquare matrix is not only existent but also unique. In this paper, we derive the Jacobian of the transformation from such a matrix to the transpose of its Moore–Penrose inverse. Using this Jacobian, we investigate the distribution of the Moore–Penrose inverse of a random matrix and propose the notion of pseudo-inverse multivariate/matrix-variate distributions. For arbitrary multivariate or matrix-variate distributions, we can develop the corresponding pseudo-inverse distributions. In particular, we present pseudo-inverse multivariate normal distributions, pseudo-inverse Dirichlet distributions, pseudo-inverse matrix-variate normal distributions and pseudo-inverse Wishart distributions
In this thesis we present the generalization of the Moore-Penrose pseudo-inverse in the sense that i...
AbstractThe Moore–Penrose inverse and generalized inverse of A+X1X2*, where A, X1, X2 are complex ma...
Inverse matrices applied to analysis and minimization of systems of linear equation
AbstractThe Moore–Penrose inverse of a singular or nonsquare matrix is not only existent but also un...
AbstractAssuming that the random matrix X has a singular or non-singular matrix variate elliptically...
The Moore-Penrose inverse of a singular Wishart matrix is studied. When the scale matrix equals the ...
AbstractIn this paper we discuss the distributions and independency properties of several generaliza...
AbstractAlthough distribution theory dates back over a century, the distributions derived were essen...
Some years ago the author defined a pseudo inverse of a singular matrix and used it in representing ...
This article describes how the Jacobian is found for certain functions of a singular random matrix, ...
Given an absolutely continuous density of a random matrix X, we study the density of the inverse whe...
AbstractSuppose thatX∽NN×m(μ,Σ,Θ). An expression for the density function is given whenΣ⩾0 and/orΘ:⩾...
The pseudo-Wishart distribution arises when a Hermitian matrix generated from a complex Gaussian ens...
summary:In a multivariate normal distribution, let the inverse of the covariance matrix be a band ma...
AbstractThis paper establishes a link between a generalized matrix Matsumoto–Yor (MY) property and t...
In this thesis we present the generalization of the Moore-Penrose pseudo-inverse in the sense that i...
AbstractThe Moore–Penrose inverse and generalized inverse of A+X1X2*, where A, X1, X2 are complex ma...
Inverse matrices applied to analysis and minimization of systems of linear equation
AbstractThe Moore–Penrose inverse of a singular or nonsquare matrix is not only existent but also un...
AbstractAssuming that the random matrix X has a singular or non-singular matrix variate elliptically...
The Moore-Penrose inverse of a singular Wishart matrix is studied. When the scale matrix equals the ...
AbstractIn this paper we discuss the distributions and independency properties of several generaliza...
AbstractAlthough distribution theory dates back over a century, the distributions derived were essen...
Some years ago the author defined a pseudo inverse of a singular matrix and used it in representing ...
This article describes how the Jacobian is found for certain functions of a singular random matrix, ...
Given an absolutely continuous density of a random matrix X, we study the density of the inverse whe...
AbstractSuppose thatX∽NN×m(μ,Σ,Θ). An expression for the density function is given whenΣ⩾0 and/orΘ:⩾...
The pseudo-Wishart distribution arises when a Hermitian matrix generated from a complex Gaussian ens...
summary:In a multivariate normal distribution, let the inverse of the covariance matrix be a band ma...
AbstractThis paper establishes a link between a generalized matrix Matsumoto–Yor (MY) property and t...
In this thesis we present the generalization of the Moore-Penrose pseudo-inverse in the sense that i...
AbstractThe Moore–Penrose inverse and generalized inverse of A+X1X2*, where A, X1, X2 are complex ma...
Inverse matrices applied to analysis and minimization of systems of linear equation