A common approach to modelling extreme values is to consider the excesses above a high threshold as realisations of a non-homogeneous Poisson process. While this method offers the advantage of modelling using threshold-invariant extreme value parameters, the dependence between these parameters makes estimation more dicult. We present a novel approach for Bayesian estimation of the Poisson process model parameters by reparameterising in terms of a tuning parameter m. This paper presents a method for choosing the optimal value of m that near-orthogonalises the parameters, which is achieved by minimising the correlation between the asymptotic posterior distribution of the parameters. This choice of m ensures more rapid convergence and ecient s...
There are numerous benefits of analysing and understanding extreme events. More specifically, quanti...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...
International audienceCombining extreme-value theory with Bayesian methods offers several advantages...
International audienceCombining extreme-value theory with Bayesian methods offers several advantages...
Combining extreme value theory with Bayesian methods offers several advantages, such as a quantifica...
Combining extreme value theory with Bayesian methods offers several advantages, such as a quantifica...
Combining extreme value theory with Bayesian methods offers several advantages, such as a quantifica...
Classical peaks over threshold analysis is widely used for statistical modeling of sample extremes, ...
Statistical extreme value theory is concerned with the use of asymptotically motivated models to des...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
Los procesos puntuales, y en particular los procesos de Poisson son herramientas muy utilizadas en ...
There are numerous benefits of analysing and understanding extreme events. More specifically, quanti...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...
National audienceCombining extreme value analysis with Bayesian methods has several advantages, such...
International audienceCombining extreme-value theory with Bayesian methods offers several advantages...
International audienceCombining extreme-value theory with Bayesian methods offers several advantages...
Combining extreme value theory with Bayesian methods offers several advantages, such as a quantifica...
Combining extreme value theory with Bayesian methods offers several advantages, such as a quantifica...
Combining extreme value theory with Bayesian methods offers several advantages, such as a quantifica...
Classical peaks over threshold analysis is widely used for statistical modeling of sample extremes, ...
Statistical extreme value theory is concerned with the use of asymptotically motivated models to des...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
We study the problem of non-parametric Bayesian estimation of the intensity function of a Poisson po...
Los procesos puntuales, y en particular los procesos de Poisson son herramientas muy utilizadas en ...
There are numerous benefits of analysing and understanding extreme events. More specifically, quanti...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...
International audienceStatistical modeling of multivariate and spatial extreme events has attracted ...