In many different fields such as hydrology, telecommunications, physics of condensed matter and finance, the gaussian model results unsatisfactory and reveals difficulties in fitting data with skewness, heavy tails and multimodality. The use of stable distributions allows for modelling skewness and heavy tails but gives rise to inferential problems related to the estimation of the stable distributions' parameters. Some recent works have proposed characteristic function based estimation method and MCMC simulation based estimation techniques like the MCMC-EM method and the Gibbs sampling method in a full Bayesian approach. The aim of this work is to generalise the stable distribution framework by introducing a model that accounts als...
Abstract: Normal mixture models provide the most popular framework for mod-elling heterogeneity in a...
In this paper we consider a variety of procedures for numerical statistical inference in the family ...
In this paper we develop an approach to Bayesian Monte Carlo inference for skewed α-stable distribut...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
Extreme values and skewness in time-series are often observed in engineering, financial and biologi...
The problem of Bayesian inference for univariate and multivariate stable processes is of considerabl...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
There is increasing need for efficient estimation of mixture distributions, especially following the...
In this paper we take up Bayesian inference in general multivariate stable distributions. We exploit...
The alpha-stable family of distributions constitutes a generalization of the Gaussian distribution, ...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Abstract. Bayesian approaches to density estimation and clustering using mixture distributions allow...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
Abstract: Normal mixture models provide the most popular framework for mod-elling heterogeneity in a...
In this paper we consider a variety of procedures for numerical statistical inference in the family ...
In this paper we develop an approach to Bayesian Monte Carlo inference for skewed α-stable distribut...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
International audienceThis chapter surveys the most standard Monte Carlo methods available for simul...
Extreme values and skewness in time-series are often observed in engineering, financial and biologi...
The problem of Bayesian inference for univariate and multivariate stable processes is of considerabl...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
There is increasing need for efficient estimation of mixture distributions, especially following the...
In this paper we take up Bayesian inference in general multivariate stable distributions. We exploit...
The alpha-stable family of distributions constitutes a generalization of the Gaussian distribution, ...
We describe and illustrate Bayesian inference in models for density estimation using mixtures of Dir...
Abstract. Bayesian approaches to density estimation and clustering using mixture distributions allow...
This dissertation is on scale mixture models and their applications to Bayesian inference. It focuse...
Abstract: Normal mixture models provide the most popular framework for mod-elling heterogeneity in a...
In this paper we consider a variety of procedures for numerical statistical inference in the family ...
In this paper we develop an approach to Bayesian Monte Carlo inference for skewed α-stable distribut...