Bayesian Estimation Of Stochastic Volatility Models With Fat Tails And Correlated Errors Applied To The South African Financial Market PDF Download

Are you looking for read ebook online? Search for your book and save it on your Kindle device, PC, phones or tablets. Download Bayesian Estimation Of Stochastic Volatility Models With Fat Tails And Correlated Errors Applied To The South African Financial Market PDF full book. Access full book title Bayesian Estimation Of Stochastic Volatility Models With Fat Tails And Correlated Errors Applied To The South African Financial Market.

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
Author: Eric Jacquier
Publisher:
Total Pages: 31
Release: 2001
Genre:
ISBN:

Download Bayesian Analysis of a Stochastic Volatility Model with Leverage Effect and Fat Tails Book in PDF, ePub and Kindle

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.


Modeling Stochastic Volatility with Application to Stock Returns

Modeling Stochastic Volatility with Application to Stock Returns
Author: Mr.Noureddine Krichene
Publisher: International Monetary Fund
Total Pages: 30
Release: 2003-06-01
Genre: Business & Economics
ISBN: 1451854846

Download Modeling Stochastic Volatility with Application to Stock Returns Book in PDF, ePub and Kindle

A stochastic volatility model where volatility was driven solely by a latent variable called news was estimated for three stock indices. A Markov chain Monte Carlo algorithm was used for estimating Bayesian parameters and filtering volatilities. Volatility persistence being close to one was consistent with both volatility clustering and mean reversion. Filtering showed highly volatile markets, reflecting frequent pertinent news. Diagnostics showed no model failure, although specification improvements were always possible. The model corroborated stylized findings in volatility modeling and has potential value for market participants in asset pricing and risk management, as well as for policymakers in the design of macroeconomic policies conducive to less volatile financial markets.


A Stochastic Volatility Model with Fat Tails, Skewness and Leverage Effects

A Stochastic Volatility Model with Fat Tails, Skewness and Leverage Effects
Author: Daniel R. Smith
Publisher:
Total Pages: 24
Release: 2007
Genre:
ISBN:

Download A Stochastic Volatility Model with Fat Tails, Skewness and Leverage Effects Book in PDF, ePub and Kindle

We develop a new stochastic volatility model that captures the three most important features of stock index returns: negative correlation between returns and future volatility, excess kurtosis and negative skewness. We estimate the model parameters by maximum likelihood using a numerical integration-based filter to deal with the latent nature of volatility. In this approach different models are defined by varying the joint density of returns and future volatility conditional on current volatility. Our innovation is to construct the joint conditional density using a copula. This approach is tremendously flexible and allows the econometrician to choose the marginal distribution of both returns and volatility independently and then stitch them together using a copula, which is also chosen independently, to form the joint density. We also develop conditional moment-based model specification tests for the extent to which the various stochastic volatility models are able to capture the skewness and excess kurtosis we observe in practice. The parameter estimates and conditional moment tests indicate that leverage effects, excess kurtosis and skewness are all crucial for modeling stock returns.


Multivariate Stochastic Volatility Models with Correlated Errors

Multivariate Stochastic Volatility Models with Correlated Errors
Author: David X. Chan
Publisher:
Total Pages: 31
Release: 2008
Genre:
ISBN:

Download Multivariate Stochastic Volatility Models with Correlated Errors Book in PDF, ePub and Kindle

We develop a Bayesian approach for parsimoniously estimating the correlation structure of the errors in a multivariate stochastic volatility model. Since the number of parameters in the joint correlation matrix of the return and volatility errors is potentially very large, we impose a prior that allows the off-diagonal elements of the inverse of the correlation matrix to be identically zero. The model is estimated using a Markov chain simulation method that samples from the posterior distribution of the volatilities and parameters. We illustrate the approach using both simulated and real examples. In the real examples, the method is applied to equities at three levels of aggregation: returns for firms within the same industry, returns for different industries and returns aggregated at the index level. We find pronounced correlation effects only at the highest level of aggregation.


Stochastic Volatility and Realized Stochastic Volatility Models

Stochastic Volatility and Realized Stochastic Volatility Models
Author: Makoto Takahashi
Publisher: Springer Nature
Total Pages: 120
Release: 2023-04-18
Genre: Business & Economics
ISBN: 981990935X

Download Stochastic Volatility and Realized Stochastic Volatility Models Book in PDF, ePub and Kindle

This treatise delves into the latest advancements in stochastic volatility models, highlighting the utilization of Markov chain Monte Carlo simulations for estimating model parameters and forecasting the volatility and quantiles of financial asset returns. The modeling of financial time series volatility constitutes a crucial aspect of finance, as it plays a vital role in predicting return distributions and managing risks. Among the various econometric models available, the stochastic volatility model has been a popular choice, particularly in comparison to other models, such as GARCH models, as it has demonstrated superior performance in previous empirical studies in terms of fit, forecasting volatility, and evaluating tail risk measures such as Value-at-Risk and Expected Shortfall. The book also explores an extension of the basic stochastic volatility model, incorporating a skewed return error distribution and a realized volatility measurement equation. The concept of realized volatility, a newly established estimator of volatility using intraday returns data, is introduced, and a comprehensive description of the resulting realized stochastic volatility model is provided. The text contains a thorough explanation of several efficient sampling algorithms for latent log volatilities, as well as an illustration of parameter estimation and volatility prediction through empirical studies utilizing various asset return data, including the yen/US dollar exchange rate, the Dow Jones Industrial Average, and the Nikkei 225 stock index. This publication is highly recommended for readers with an interest in the latest developments in stochastic volatility models and realized stochastic volatility models, particularly in regards to financial risk management.


EGARCH and Stochastic Volatility

EGARCH and Stochastic Volatility
Author: Jouchi Nakajima
Publisher:
Total Pages: 28
Release: 2008
Genre: Stochastic processes
ISBN:

Download EGARCH and Stochastic Volatility Book in PDF, ePub and Kindle

"This paper proposes the EGARCH [Exponential Generalized Autoregressive Conditional Heteroskedasticity] model with jumps and heavy-tailed errors, and studies the empirical performance of different models including the stochastic volatility models with leverage, jumps and heavy-tailed errors for daily stock returns. In the framework of a Bayesian inference, the Markov chain Monte Carlo estimation methods for these models are illustrated with a simulation study. The model comparison based on the marginal likelihood estimation is provided with data on the U.S. stock index."--Author's abstract.


Stochastic Volatility

Stochastic Volatility
Author: Neil Shephard
Publisher: Oxford University Press, USA
Total Pages: 534
Release: 2005
Genre: Business & Economics
ISBN: 0199257205

Download Stochastic Volatility Book in PDF, ePub and Kindle

Stochastic volatility is the main concept used in the fields of financial economics and mathematical finance to deal with time-varying volatility in financial markets. This work brings together some of the main papers that have influenced this field, andshows that the development of this subject has been highly multidisciplinary.


Bayesian Inference for Stochastic Volatility Models

Bayesian Inference for Stochastic Volatility Models
Author: Zhongxian Men
Publisher:
Total Pages: 163
Release: 2012
Genre:
ISBN:

Download Bayesian Inference for Stochastic Volatility Models Book in PDF, ePub and Kindle

Stochastic volatility (SV) models provide a natural framework for a representation of time series for financial asset returns. As a result, they have become increasingly popular in the finance literature, although they have also been applied in other fields such as signal processing, telecommunications, engineering, biology, and other areas. In working with the SV models, an important issue arises as how to estimate their parameters efficiently and to assess how well they fit real data. In the literature, commonly used estimation methods for the SV models include general methods of moments, simulated maximum likelihood methods, quasi Maximum likelihood method, and Markov Chain Monte Carlo (MCMC) methods. Among these approaches, MCMC methods are most flexible in dealing with complicated structure of the models. However, due to the difficulty in the selection of the proposal distribution for Metropolis-Hastings methods, in general they are not easy to implement and in some cases we may also encounter convergence problems in the implementation stage. In the light of these concerns, we propose in this thesis new estimation methods for univariate and multivariate SV models.


Stochastic Volatility Models and Simulated Maximum Likelihood Estimation

Stochastic Volatility Models and Simulated Maximum Likelihood Estimation
Author: Ji Eun Choi
Publisher:
Total Pages: 141
Release: 2011
Genre:
ISBN:

Download Stochastic Volatility Models and Simulated Maximum Likelihood Estimation Book in PDF, ePub and Kindle

Financial time series studies indicate that the lognormal assumption for the return of an underlying security is often violated in practice. This is due to the presence of time-varying volatility in the return series. The most common departures are due to a fat left-tail of the return distribution, volatility clustering or persistence, and asymmetry of the volatility. To account for these characteristics of time-varying volatility, many volatility models have been proposed and studied in the financial time series literature. Two main conditional-variance model specifications are the autoregressive conditional heteroscedasticity (ARCH) and the stochastic volatility (SV) models. The SV model, proposed by Taylor (1986), is a useful alternative to the ARCH family (Engle (1982)). It incorporates time-dependency of the volatility through a latent process, which is an autoregressive model of order 1 (AR(1)), and successfully accounts for the stylized facts of the return series implied by the characteristics of time-varying volatility. In this thesis, we review both ARCH and SV models but focus on the SV model and its variations. We consider two modified SV models. One is an autoregressive process with stochastic volatility errors (AR--SV) and the other is the Markov regime switching stochastic volatility (MSSV) model. The AR--SV model consists of two AR processes. The conditional mean process is an AR(p) model, and the conditional variance process is an AR(1) model. One notable advantage of the AR--SV model is that it better captures volatility persistence by considering the AR structure in the conditional mean process. The MSSV model consists of the SV model and a discrete Markov process. In this model, the volatility can switch from a low level to a high level at random points in time, and this feature better captures the volatility movement. We study the moment properties and the likelihood functions associated with these models. In spite of the simple structure of the SV models, it is not easy to estimate parameters by conventional estimation methods such as maximum likelihood estimation (MLE) or the Bayesian method because of the presence of the latent log-variance process. Of the various estimation methods proposed in the SV model literature, we consider the simulated maximum likelihood (SML) method with the efficient importance sampling (EIS) technique, one of the most efficient estimation methods for SV models. In particular, the EIS technique is applied in the SML to reduce the MC sampling error.