Context. Whenever correlation functions are used for inference about cosmological parameters in the context of a Bayesian analysis, the likelihood function of correlation functions needs to be known. Usually, it is approximated as a multivariate Gaussian, though this is not necessarily a good approximation. Aims. We show how to calculate a better approximation for the probability distribution of correlation functions of one-dimensional random fields, which we call “quasi-Gaussian”. Methods. Using the exact univariate probability distribution function (PDF) as well as constraints on correlation functions previously derived, we transform the correlation func...
In this paper we discuss how a Gaussian random field with Matérn covariance function can repre...
In this paper we discuss how a Gaussian random field with Matérn covariance function can repre...
Based on the canonical correlation analysis, we derive series representations of the probability den...
The likelihood function of correlation functions needs to be known whenever they are used for infere...
Context. Two-point correlation functions are used throughout cosmology as a measure for the statisti...
Context: Two-point correlation functions are used throughout cosmology as a measure for the statisti...
[eng] Context: Two-point correlation functions are used throughout cosmology as a measure for the st...
Context. In previous work, we developed a quasi-Gaussian approximation for the likelihood of correla...
Context. In previous work, we developed a quasi-Gaussian approximation for the likelihood of correla...
Context. In previous work, we developed a quasi-Gaussian approximation for the likelihood of correla...
Context: Two-point correlation functions are used throughout cosmology as a measure for the statisti...
Correlation functions are an omnipresent tool in astrophysics, and they are routinely used to study ...
Measurements of correlation functions and their comparison with theoretical models are often employe...
AbstractIntrinsic Gaussian random fields generated by conditional autoregressive models are consider...
In many probabilistic analysis problems, the homogeneous/nonhomogeneous non-Gaussian field is repres...
In this paper we discuss how a Gaussian random field with Matérn covariance function can repre...
In this paper we discuss how a Gaussian random field with Matérn covariance function can repre...
Based on the canonical correlation analysis, we derive series representations of the probability den...
The likelihood function of correlation functions needs to be known whenever they are used for infere...
Context. Two-point correlation functions are used throughout cosmology as a measure for the statisti...
Context: Two-point correlation functions are used throughout cosmology as a measure for the statisti...
[eng] Context: Two-point correlation functions are used throughout cosmology as a measure for the st...
Context. In previous work, we developed a quasi-Gaussian approximation for the likelihood of correla...
Context. In previous work, we developed a quasi-Gaussian approximation for the likelihood of correla...
Context. In previous work, we developed a quasi-Gaussian approximation for the likelihood of correla...
Context: Two-point correlation functions are used throughout cosmology as a measure for the statisti...
Correlation functions are an omnipresent tool in astrophysics, and they are routinely used to study ...
Measurements of correlation functions and their comparison with theoretical models are often employe...
AbstractIntrinsic Gaussian random fields generated by conditional autoregressive models are consider...
In many probabilistic analysis problems, the homogeneous/nonhomogeneous non-Gaussian field is repres...
In this paper we discuss how a Gaussian random field with Matérn covariance function can repre...
In this paper we discuss how a Gaussian random field with Matérn covariance function can repre...
Based on the canonical correlation analysis, we derive series representations of the probability den...