This paper develops a novel and efficient algorithm for Bayesian inference in inverse Gamma stochastic volatility models. It is shown that by conditioning on auxiliary variables, it is possible to sample all the volatilities jointly directly from their posterior conditional density, using simple and easy to draw from distributions. Furthermore, this paper develops a generalized inverse gamma process with more flexible tails in the distribution of volatilities, which still allows for simple and efficient calculations. Using several macroeconomic and financial datasets, it is shown that the inverse gamma and generalized inverse gamma processes can greatly outperform the commonly used log normal volatility processes with Student’s t errors or ...
In this work we propose a statistical characterization of a linear stochastic volatility model featu...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
We develop Markov chain Monte Carlo methodology for Bayesian inference for non-Gaussian Ornstein-Uhl...
This paper develops a novel and e ¢ cient algorithm for Bayesian inference in inverse Gamma Stochast...
This paper develops a novel and efficient algorithm for Bayesian inference in inverse Gamma Stochast...
We study a nonparametric Bayesian approach to estimation of the volatility function of a stochastic ...
https://www.grips.ac.jp/list/jp/facultyinfo/leon_gonzalez_roberto/We obtain a novel analytic express...
Abstract This paper discusses practical Bayesian estimation of stochastic volatility models based on...
We study a nonparametric Bayesian approach to estimation of the volatility function of a stochastic ...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
Abstract: We examine the class of extended generalized inverse Gaus-sian (EGIG) distributions. This ...
We develop Markov chain Monte Carlo methodology for Bayesian inference for non-Gaussian Ornstein–Uhl...
In this work we propose a statistical characterization of a linear stochastic volatility model featu...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
We develop Markov chain Monte Carlo methodology for Bayesian inference for non-Gaussian Ornstein-Uhl...
This paper develops a novel and e ¢ cient algorithm for Bayesian inference in inverse Gamma Stochast...
This paper develops a novel and efficient algorithm for Bayesian inference in inverse Gamma Stochast...
We study a nonparametric Bayesian approach to estimation of the volatility function of a stochastic ...
https://www.grips.ac.jp/list/jp/facultyinfo/leon_gonzalez_roberto/We obtain a novel analytic express...
Abstract This paper discusses practical Bayesian estimation of stochastic volatility models based on...
We study a nonparametric Bayesian approach to estimation of the volatility function of a stochastic ...
We study a Markov switching stochastic volatility model with heavy tail innovations in the observab...
An efficient method for Bayesian inference in stochastic volatility models uses a linear state space...
We investigate simulation methodology for Bayesian inference in Lévy-driven stochastic volatility (S...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
Abstract: We examine the class of extended generalized inverse Gaus-sian (EGIG) distributions. This ...
We develop Markov chain Monte Carlo methodology for Bayesian inference for non-Gaussian Ornstein–Uhl...
In this work we propose a statistical characterization of a linear stochastic volatility model featu...
This paper is concerned with simulation-based inference in generalized models of stochastic volatili...
We develop Markov chain Monte Carlo methodology for Bayesian inference for non-Gaussian Ornstein-Uhl...