This paper extends the Bayesian semiparametric stochastic volatility (SV-DPM) model of Jensen and Maheu (2010). Instead of using a Dirichlet process mixture (DPM) to model return innovations, we use an infinite hidden Markov model (IHMM). This allows for time variation in the return density beyond that attributed to parametric latent volatility. The new model nests several special cases as well as the SV-DPM. We also discuss posterior and predictive density simulation methods for the model. Applied to equity returns, foreign exchange rates, oil price growth and industrial production growth, the new model improves density forecasts, compared to the SV-DPM, a stochastic volatility with Student-t innovations and other fat-tailed volat...
This paper designs a Particle Learning (PL) algorithm for estimation of Bayesian nonparametric Stoch...
This thesis develops new hidden Markov models and applies them to financial market and macroeconomi...
The use of volatility models to conduct volatility forecasting is gaining momentum in empirical lite...
A new process — the factorial hidden Markov volatility (FHMV) model — is proposed to model financia...
This paper proposes a new Bayesian semiparametric model that combines a multivariate GARCH (MGARCH) ...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
This paper proposes a class of models that jointly model returns and ex-post variance measures under...
We propose a stochastic volatility model where the conditional variance of asset returns switches ac...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
In this paper, we review the most common specifications of discrete-time stochastic volatility (SV) ...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
A stochastic volatility (SV) problem is formulated as a state space form of a Hidden Markov model (H...
We address the problem of parameter estimation for diffusion driven stochastic volatility models thr...
The time-series dynamics of short-term interest rates are important as they are a key input into pri...
Hidden semi-Markov models (HSMMs) are a powerful class of statistical model that have been applied t...
This paper designs a Particle Learning (PL) algorithm for estimation of Bayesian nonparametric Stoch...
This thesis develops new hidden Markov models and applies them to financial market and macroeconomi...
The use of volatility models to conduct volatility forecasting is gaining momentum in empirical lite...
A new process — the factorial hidden Markov volatility (FHMV) model — is proposed to model financia...
This paper proposes a new Bayesian semiparametric model that combines a multivariate GARCH (MGARCH) ...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
This paper proposes a class of models that jointly model returns and ex-post variance measures under...
We propose a stochastic volatility model where the conditional variance of asset returns switches ac...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
In this paper, we review the most common specifications of discrete-time stochastic volatility (SV) ...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
A stochastic volatility (SV) problem is formulated as a state space form of a Hidden Markov model (H...
We address the problem of parameter estimation for diffusion driven stochastic volatility models thr...
The time-series dynamics of short-term interest rates are important as they are a key input into pri...
Hidden semi-Markov models (HSMMs) are a powerful class of statistical model that have been applied t...
This paper designs a Particle Learning (PL) algorithm for estimation of Bayesian nonparametric Stoch...
This thesis develops new hidden Markov models and applies them to financial market and macroeconomi...
The use of volatility models to conduct volatility forecasting is gaining momentum in empirical lite...