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Bayesian Analysis of a Threshold Stochastic Volatility Model

Bayesian Analysis of a Threshold Stochastic Volatility Model PDF Author: Tony S. Wirjanto
Publisher:
ISBN:
Category :
Languages : en
Pages :

Book Description
This paper proposes a parsimonious threshold stochastic volatility (SV) model for financial asset returns. Instead of imposing a threshold value on the dynamics of the latent volatility process of the SV model, we assume that the innovation of the mean equation follows a threshold distribution in which the mean innovation switches between two regimes. In our model, the threshold is treated as an unknown parameter. We show that the proposed threshold SV model not only can capture the time-varying volatility of returns, but also can accommodate the asymmetric shape of conditional distribution of the returns. Parameter estimation is carried out by using Markov Chain Monte Carlo methods. For model selection and volatility forecast, an auxiliary particle filter technique is employed to approximate the filter and prediction distributions of the returns. Several experiments are conducted to assess the robustness of the proposed model and estimation methods. In the empirical study, we apply our threshold SV model to three return time series. The empirical analysis results show that the threshold parameter has a nonzero value and the mean innovations belong to two separately distinct regimes. We also find that the model with an unknown threshold parameter value consistently outperforms the model with a known threshold parameter value.

Bayesian Analysis of a Threshold Stochastic Volatility Model

Bayesian Analysis of a Threshold Stochastic Volatility Model PDF Author: Tony S. Wirjanto
Publisher:
ISBN:
Category :
Languages : en
Pages :

Book Description
This paper proposes a parsimonious threshold stochastic volatility (SV) model for financial asset returns. Instead of imposing a threshold value on the dynamics of the latent volatility process of the SV model, we assume that the innovation of the mean equation follows a threshold distribution in which the mean innovation switches between two regimes. In our model, the threshold is treated as an unknown parameter. We show that the proposed threshold SV model not only can capture the time-varying volatility of returns, but also can accommodate the asymmetric shape of conditional distribution of the returns. Parameter estimation is carried out by using Markov Chain Monte Carlo methods. For model selection and volatility forecast, an auxiliary particle filter technique is employed to approximate the filter and prediction distributions of the returns. Several experiments are conducted to assess the robustness of the proposed model and estimation methods. In the empirical study, we apply our threshold SV model to three return time series. The empirical analysis results show that the threshold parameter has a nonzero value and the mean innovations belong to two separately distinct regimes. We also find that the model with an unknown threshold parameter value consistently outperforms the model with a known threshold parameter value.

Bayesian Analysis of Stochastic Volatility Models

Bayesian Analysis of Stochastic Volatility Models PDF Author: Asma Graja
Publisher:
ISBN:
Category :
Languages : en
Pages :

Book Description
Time varying volatility is a characteristic of many financial series. An alternative to the popular ARCH framework is a Stochastic Volatility model which is harder to estimate than the ARCH family. In this paper we estimate and compare two classes of Stochastic Volatility models proposed in financial literature: the Log normal autoregressive model with some extensions and the Heston model. The basic univariate Stochastic Volatility model is extended to allow for the quot;leverage effectquot; via correlation between the volatility and the mean innovations and for fat tails in the mean equation innovation.A Bayesian Markov Chain Monte Carlo algorithm developed in Jacquier, Polson and Rossi 2004 is analyzed and applied to a large data base of the French financial market. Moreover, explicit expression for the parameter's estimators is found via Monte Carlo technique.

Stochastic Volatility Models with Heavy-tailed Distributions

Stochastic Volatility Models with Heavy-tailed Distributions PDF Author: Toshiaki Watanabe
Publisher:
ISBN:
Category : Bayesian statistical decision theory
Languages : en
Pages : 64

Book Description


Robust Bayesian Analysis of Heavy-tailed Stochastic Volatility Models Using Scale Mixtures of Normal Distributions

Robust Bayesian Analysis of Heavy-tailed Stochastic Volatility Models Using Scale Mixtures of Normal Distributions PDF Author: C. A. Abanto-Valle
Publisher:
ISBN:
Category : Bayesian statistical decision theory
Languages : en
Pages : 42

Book Description


Bugs for a Bayesian Analysis of Stochastic Volatility Models

Bugs for a Bayesian Analysis of Stochastic Volatility Models PDF Author: Renate Meyer
Publisher:
ISBN:
Category :
Languages : en
Pages : 17

Book Description
This paper reviews the general Bayesian approach to parameter estimation in stochastic volatility models with posterior computations performed by Gibbs sampling. The main purpose is to illustrate the ease with which the Bayesian stochastic volatility model can now be studied routinely via BUGS (Bayesian Inference Using Gibbs Sampling), a recently developed, user-friendly, and freely available software package. It is an ideal software tool for the exploratory phase of model building as any modifications of a model including changes of priors and sampling error distributions are readily realized with only minor changes of the code. BUGS automates the calculation of the full conditional posterior distributions using a model representation by directed acyclic graphs. It contains an expert system for choosing an efficient sampling method for each full conditional. Furthermore, software for convergence diagnostics and statistical summaries is available for the BUGS output. The BUGS implementation of a stochastic volatility model is illustrated using a time series of daily Pound/Dollar exchange rates.

Bayesian Analysis of Moving Average Stochastic Volatility Models

Bayesian Analysis of Moving Average Stochastic Volatility Models PDF Author: Stefanos Dimitrakopoulos
Publisher:
ISBN:
Category :
Languages : en
Pages : 28

Book Description
We propose a moving average stochastic volatility in mean model and a moving average stochastic volatility model with leverage. For parameter estimation, we develop efficient Markov chain Monte Carlo algorithms and illustrate our methods, using simulated data and a real data set. We compare the proposed specifications against several competing stochastic volatility models, using marginal likelihoods and the observed-data Deviance information criterion. We find that the moving average stochastic volatility model with leverage has better fit to our daily return series than various standard benchmarks.

Bayesian Stochastic Volatility Models

Bayesian Stochastic Volatility Models PDF Author: Stefanos Giakoumatos
Publisher: LAP Lambert Academic Publishing
ISBN: 9783838386331
Category :
Languages : en
Pages : 240

Book Description
The phenomenon of changing variance and covariance is often encountered in financial time series. As a result, during the last years researchers focused on the time-varying volatility models. These models are able to describe the main characteristics of the financial data such as the volatility clustering. In addition, the development of the Markov Chain Monte Carlo Techniques (MCMC) provides a powerful tool for the estimation of the parameters of the time-varying volatility models, in the context of Bayesian analysis. In this thesis, we adopt the Bayesian inference and we propose easy-to-apply MCMC algorithms for a variety of time-varying volatility models. We use a recent development in the context of the MCMC techniques, the Auxiliary variable sampler. This technique enables us to construct MCMC algorithms, which only consist of Gibbs steps. We propose new MCMC algorithms for many univariate and multivariate models. Furthermore, we apply the proposed MCMC algorithms to real data and compare the above models based on their predictive distribution

Bayesian Analysis of Stochastic Volatility Models

Bayesian Analysis of Stochastic Volatility Models PDF Author: Joanne Jia Jia Wang
Publisher:
ISBN:
Category : Bayesian statistical decision theory
Languages : en
Pages : 468

Book Description


Bayesian Analysis of a Stochastic Volatility Model with Leverage Effect and Fat Tails

Bayesian Analysis of a Stochastic Volatility Model with Leverage Effect and Fat Tails PDF Author: Eric Jacquier
Publisher:
ISBN:
Category :
Languages : en
Pages : 31

Book Description
The basic univariate stochastic volatility model specifies that conditional volatility follows a log-normal auto-regressive model with innovations assumed to be independent of the innovations in the conditional mean equation. Since the introduction of practical methods for inference in the basic volatility model (JPR-(1994)), it has been observed that the basic model is too restrictive for many financial series. We extend the basic SVOL to allow for a so-called quot;Leverage effectquot; via correlation between the volatility and mean innovations, and for fat-tails in the mean equation innovation. A Bayesian Markov Chain Monte Carlo algorithm is developed for the extended volatility model. Thus far, likelihood-based inference for the correlated SVOL model has not appeared in the literature. We develop Bayes Factors to assess the importance of the leverage and fat-tail extensions. Sampling experiments reveal little loss in precision from adding the model extensions but a large loss from using the basic model in the presence of mis-specification. For both equity and exchange rate data, there is overwhelming evidence in favor of models with fat-tailed volatility innovations, and for a leverage effect in the case of equity indices. We also find that volatility estimates from the extended model are markedly different from those produced by the basic SVOL.

Bayesian Analysis of Stochastic Volatility Models

Bayesian Analysis of Stochastic Volatility Models PDF Author: Eric Jacquier
Publisher:
ISBN:
Category : Bayesian statistical decision theory
Languages : en
Pages : 41

Book Description