The α-stable distribution is very useful for modelling data with extreme values and skewed behaviour. The distribution is governed by two key parameters, tail thickness and skewness, in addition to scale and location. Inferring these parameters is difficult due to the lack of a closed form expression of the probability density. We develop a Bayesian method, based on the pseudo-marginal MCMC approach, that requires only unbiased estimates of the intractable likelihood. To compute these estimates we build an adaptive importance sampler for a latentvariable- representation of the α-stable density. This representation has previously been used in the literature for conditional MCMC sampling of the parameters, and we compare our method with this ...
Approximate Bayesian computation (ABC) [11, 42] is a popular method for Bayesian inference involvin...
We investigate the class of σ-stable Poisson–Kingman random probability measures (RPMs) in the cont...
Markov chain Monte Carlo (MCMC) is an approach to parameter inference in Bayesian models that is bas...
The α-stable distribution is very useful for modelling data with extreme values and skewed behaviour...
The α-stable distribution is very useful for modelling data with extreme values and skewed behaviour...
The alpha-stable family of distributions constitutes a generalization of the Gaussian distribution, ...
In this paper we study parameter estimation for α-stable distribution parameters. The proposed appro...
The class of alpha-stable distributions enjoys multiple practical applications in signal processing,...
In this paper we develop an approach to Bayesian Monte Carlo inference for skewed α-stable distribut...
Extreme values and skewness in time-series are often observed in engineering, financial and biologi...
Recent advances in Markov chain Monte Carlo (MCMC) extend the scope of Bayesian inference to models ...
This paper describes a method for estimating the marginal likelihood or Bayes fac-tors of Bayesian m...
AbstractAlthough there are several software products dealing with the issue of simulating and estima...
The problem of nonparametric estimation of the conditional density of a response, given a vector of ...
We introduce two new methods for estimating the Marginal Data Density (MDD) from the Gibbs output, w...
Approximate Bayesian computation (ABC) [11, 42] is a popular method for Bayesian inference involvin...
We investigate the class of σ-stable Poisson–Kingman random probability measures (RPMs) in the cont...
Markov chain Monte Carlo (MCMC) is an approach to parameter inference in Bayesian models that is bas...
The α-stable distribution is very useful for modelling data with extreme values and skewed behaviour...
The α-stable distribution is very useful for modelling data with extreme values and skewed behaviour...
The alpha-stable family of distributions constitutes a generalization of the Gaussian distribution, ...
In this paper we study parameter estimation for α-stable distribution parameters. The proposed appro...
The class of alpha-stable distributions enjoys multiple practical applications in signal processing,...
In this paper we develop an approach to Bayesian Monte Carlo inference for skewed α-stable distribut...
Extreme values and skewness in time-series are often observed in engineering, financial and biologi...
Recent advances in Markov chain Monte Carlo (MCMC) extend the scope of Bayesian inference to models ...
This paper describes a method for estimating the marginal likelihood or Bayes fac-tors of Bayesian m...
AbstractAlthough there are several software products dealing with the issue of simulating and estima...
The problem of nonparametric estimation of the conditional density of a response, given a vector of ...
We introduce two new methods for estimating the Marginal Data Density (MDD) from the Gibbs output, w...
Approximate Bayesian computation (ABC) [11, 42] is a popular method for Bayesian inference involvin...
We investigate the class of σ-stable Poisson–Kingman random probability measures (RPMs) in the cont...
Markov chain Monte Carlo (MCMC) is an approach to parameter inference in Bayesian models that is bas...