The generalized inverse Gaussian distribution has become quite popular in financial engineering. The most popular random variate generator is due to Dagpunar (1989). It is an acceptance-rejection algorithm method based on the Ratio-of-uniforms method. However, it is not uniformly fast as it has a prohibitive large rejection constant when the distribution is close to the gamma distribution. Recently some papers have discussed universal methods that are suitable for this distribution. However, these methods require an expensive setup and are therefore not suitable for the varying parameter case which occurs in, e.g., Gibbs sampling. In this paper we analyze the performance of Dagpunar's algorithm and combine it with a new rejection method whi...
The standard efficient testing procedures in the Generalized Inverse Gaussian (GIG) family (also kno...
We develop a new efficient simulation scheme for sampling two families of tilted stable distribution...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
We consider the problem of random variate generation from generalized inverse Gaussian (GIG) distrib...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Di...
The generalized inverse Gaussian (GIG) Lévy process is a limit of compound Poisson processes, includ...
This paper develops a novel and efficient algorithm for Bayesian inference in inverse Gamma Stochast...
We present a numerical inversion method for generating random variates from continuous distributions...
For discrete distributions a variant of rejection from a continuous hat function is presented. The m...
A method for parallel inversion of the gamma distribution is described. This is very desirable for r...
The gamma process and the inverse Gaussian process are widely used in condition-based maintenance. B...
We present a numerical inversion method for generating random variates from continuous distributions...
peer reviewedThe standard efficient testing procedures in the Generalized Inverse Gaussian (GIG) fam...
Abstract: We examine the class of extended generalized inverse Gaus-sian (EGIG) distributions. This ...
AbstractFrequently the need arises for the computer generation of variates that are exactly distribu...
The standard efficient testing procedures in the Generalized Inverse Gaussian (GIG) family (also kno...
We develop a new efficient simulation scheme for sampling two families of tilted stable distribution...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...
We consider the problem of random variate generation from generalized inverse Gaussian (GIG) distrib...
This thesis was submitted for the degree of Doctor of Philosophy and awarded by Brunel University.Di...
The generalized inverse Gaussian (GIG) Lévy process is a limit of compound Poisson processes, includ...
This paper develops a novel and efficient algorithm for Bayesian inference in inverse Gamma Stochast...
We present a numerical inversion method for generating random variates from continuous distributions...
For discrete distributions a variant of rejection from a continuous hat function is presented. The m...
A method for parallel inversion of the gamma distribution is described. This is very desirable for r...
The gamma process and the inverse Gaussian process are widely used in condition-based maintenance. B...
We present a numerical inversion method for generating random variates from continuous distributions...
peer reviewedThe standard efficient testing procedures in the Generalized Inverse Gaussian (GIG) fam...
Abstract: We examine the class of extended generalized inverse Gaus-sian (EGIG) distributions. This ...
AbstractFrequently the need arises for the computer generation of variates that are exactly distribu...
The standard efficient testing procedures in the Generalized Inverse Gaussian (GIG) family (also kno...
We develop a new efficient simulation scheme for sampling two families of tilted stable distribution...
In this paper we explore some crude approximation, calibration and estimation procedures for Normal ...