Aims.The maximum-likelihood method is the standard approach to obtain model fits to observational data and the corresponding confidence regions. We investigate possible sources of bias in the log-likelihood function and its subsequent analysis, focusing on estimators of the inverse covariance matrix. Furthermore, we study under which circumstances the estimated covariance matrix is invertible. Methods.We perform Monte-Carlo simulations to investigate the behaviour of estimators for the inverse covariance matrix, depending on the number of independent data sets and the number of variables of the data vectors. Results.We find that the inverse of the maximum-likelihood estimator of the covariance is biased, the amount of bias ...
In this paper, we consider the estimation for the inverse matrix of a high-dimensional covariance ma...
Most of the methods proposed in the literature for evaluating forecast uncertainty in econometric mo...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
Aims.The maximum-likelihood method is the standard approach to obtain model fits to observational da...
AIMS. The maximum-likelihood method is the standard approach to obtain model fits to observational d...
When the coefficients of a Tobit model are estimated by maximum likelihood their covariance matrix I...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
Abstract—In many practical situations we would like to es-timate the covariance matrix of a set of v...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
Parameter inference with an estimated covariance matrix systematically loses information due to the ...
We investigate simulation-based bandpower covariance matrices commonly used in cosmological paramete...
Estimating large covariance matrices from small samples is an important problem in many fields. Amon...
With most of the available software packages, estimates of the parameter covariance matrix in a GARC...
Standard covariance matrix estimation procedures can be very affected by either the presence of outl...
In this paper, we consider the estimation for the inverse matrix of a high-dimensional covariance ma...
Most of the methods proposed in the literature for evaluating forecast uncertainty in econometric mo...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...
Aims.The maximum-likelihood method is the standard approach to obtain model fits to observational da...
AIMS. The maximum-likelihood method is the standard approach to obtain model fits to observational d...
When the coefficients of a Tobit model are estimated by maximum likelihood their covariance matrix I...
When inferring parameters from a Gaussian-distributed data set by computing a likelihood, a covarian...
Abstract—In many practical situations we would like to es-timate the covariance matrix of a set of v...
We introduce a distributionally robust maximum likelihood estimation model with a Wasserstein ambigu...
The dependency structure of multivariate data can be analyzed using the covariance matrix. In many f...
Parameter inference with an estimated covariance matrix systematically loses information due to the ...
We investigate simulation-based bandpower covariance matrices commonly used in cosmological paramete...
Estimating large covariance matrices from small samples is an important problem in many fields. Amon...
With most of the available software packages, estimates of the parameter covariance matrix in a GARC...
Standard covariance matrix estimation procedures can be very affected by either the presence of outl...
In this paper, we consider the estimation for the inverse matrix of a high-dimensional covariance ma...
Most of the methods proposed in the literature for evaluating forecast uncertainty in econometric mo...
summary:If is shown that in linear regression models we do not make a great mistake if we substitute...