The Fisher information matrix (FIM) is a critical quantity in several aspects of mathematical modeling, including input selection and con¯dence region calculation. Analytical determination of the FIM in a general setting, specially in nonlinear mod- els, may be di±cult or almost impossible due to intractable modeling requirements and/or intractable high-dimensional integration. To circumvent these di±culties, a Monte Carlo (MC) simulation-based technique, resampling algorithm, based on the values of log-likelihood function or its exact stochastic gradient computed by using a set of pseudo data vectors, is usually rec- ommended. The current work proposes an extension of the resampling algorithm in order to enhance the statistical qu...
Fisher matrices play an important role in experimental design and in data analysis. Their primary ro...
In the statsitical analysis of observations from multinomial distribution, it is somtimes estimate t...
The Fisher scoring method is widely used for likelihood maximization, but its application can be dif...
The Fisher information matrix (FIM) is a critical quantity in several aspects of mathematical modeli...
The Fisher information matrix (FIM) is a critical quantity in several aspects of mathematical modeli...
National audienceThe Fisher information matrix (FIM) plays a key role in statistics. It is crucial i...
In estimation theory, the Fisher information matrix (FIM) is a fundamental concept from which we can...
International audienceThe design of experiments for discrete mixed effect models is challenging due ...
International audienceNonlinear mixed effect models (NLMEMs) are widely used for the analysis of lon...
The Fisher information matrix (FIM) is a key quantity in statistics as it is required for example fo...
AbstractThe Fisher information matrix is useful in time series modeling mainly because the significa...
The Fisher information matrix (FIM) is a widely used measure for applications including statistical ...
It is well known that a suggestive relation exists that links the Schrödinger equation (SE) to the i...
This paper develops formulae to compute the Fisher information matrix for the regression parameters ...
AbstractThis paper deals with a direct derivation of Fisher's information matrix of vector state spa...
Fisher matrices play an important role in experimental design and in data analysis. Their primary ro...
In the statsitical analysis of observations from multinomial distribution, it is somtimes estimate t...
The Fisher scoring method is widely used for likelihood maximization, but its application can be dif...
The Fisher information matrix (FIM) is a critical quantity in several aspects of mathematical modeli...
The Fisher information matrix (FIM) is a critical quantity in several aspects of mathematical modeli...
National audienceThe Fisher information matrix (FIM) plays a key role in statistics. It is crucial i...
In estimation theory, the Fisher information matrix (FIM) is a fundamental concept from which we can...
International audienceThe design of experiments for discrete mixed effect models is challenging due ...
International audienceNonlinear mixed effect models (NLMEMs) are widely used for the analysis of lon...
The Fisher information matrix (FIM) is a key quantity in statistics as it is required for example fo...
AbstractThe Fisher information matrix is useful in time series modeling mainly because the significa...
The Fisher information matrix (FIM) is a widely used measure for applications including statistical ...
It is well known that a suggestive relation exists that links the Schrödinger equation (SE) to the i...
This paper develops formulae to compute the Fisher information matrix for the regression parameters ...
AbstractThis paper deals with a direct derivation of Fisher's information matrix of vector state spa...
Fisher matrices play an important role in experimental design and in data analysis. Their primary ro...
In the statsitical analysis of observations from multinomial distribution, it is somtimes estimate t...
The Fisher scoring method is widely used for likelihood maximization, but its application can be dif...