This paper proposes a practical approach to extreme value estimation for small samples of observations with truncated values, or high measurement uncertainty, facilitating reasonable estimation of epistemic uncertainty. The approach, called the likelihood-weighted method (LWM), involves Bayesian inference incorporating group likelihood for the generalised Pareto or generalised extreme value distributions and near-uniform prior distributions for parameters. Group likelihood (as opposed to standard likelihood) provides a straightforward mechanism to incorporate measurement error in inference, and adopting flat priors simplifies computation. The method's statistical and computational efficiency are validated by numerical experiment for small s...
Statistical extreme value theory is concerned with the use of asymptotically motivated models to des...
International audienceWithin the framework of the GPD-Poisson model for determining extreme values o...
Extreme value theory is the branch of statistics inferring extreme events in random processes. Bayes...
Models for extreme values are usually based on detailed asymptotic argument, for which strong ergodi...
We investigate the effect that the choice of measurement scale has upon inference and extrapolation ...
Abstract This paper is concerned with extreme value density estimation. The generalized Pareto distr...
An improved method to estimate the probability of extreme events from independent observations is pr...
The article takes up Bayesian inference in extreme value distributions and also considers extreme va...
xtreme value analysis is concerned with the modelling of extreme events such as floods and heatwaves...
Models for extreme values are usually based on detailed asymptotic argument, for which strong ergodi...
We estimate uncertainties in ocean engineering design values due to imperfect knowledge of the ocean...
In extreme value theory and other related risk analysis fields, probability weighted moments (PWM) h...
We discuss the use of likelihood asymptotics for inference on risk measures in univariate extreme va...
[[abstract]]The extreme value distribution has been extensively used to model natural phenomena such...
In this article, the maximum likelihood and Bayes estimates of the generalized extreme value distrib...
Statistical extreme value theory is concerned with the use of asymptotically motivated models to des...
International audienceWithin the framework of the GPD-Poisson model for determining extreme values o...
Extreme value theory is the branch of statistics inferring extreme events in random processes. Bayes...
Models for extreme values are usually based on detailed asymptotic argument, for which strong ergodi...
We investigate the effect that the choice of measurement scale has upon inference and extrapolation ...
Abstract This paper is concerned with extreme value density estimation. The generalized Pareto distr...
An improved method to estimate the probability of extreme events from independent observations is pr...
The article takes up Bayesian inference in extreme value distributions and also considers extreme va...
xtreme value analysis is concerned with the modelling of extreme events such as floods and heatwaves...
Models for extreme values are usually based on detailed asymptotic argument, for which strong ergodi...
We estimate uncertainties in ocean engineering design values due to imperfect knowledge of the ocean...
In extreme value theory and other related risk analysis fields, probability weighted moments (PWM) h...
We discuss the use of likelihood asymptotics for inference on risk measures in univariate extreme va...
[[abstract]]The extreme value distribution has been extensively used to model natural phenomena such...
In this article, the maximum likelihood and Bayes estimates of the generalized extreme value distrib...
Statistical extreme value theory is concerned with the use of asymptotically motivated models to des...
International audienceWithin the framework of the GPD-Poisson model for determining extreme values o...
Extreme value theory is the branch of statistics inferring extreme events in random processes. Bayes...