This paper outlines a general methodology for estimating the parameters of financial models commonly employed in the literature. A numerical Bayesian technique is utilised to obtain the posterior density of model parameters and functions thereof. Unlike maximum likelihood estimation, where inference is only justified in large samples, the Bayesian densities are exact for any sample size. A series of simulation studies are conducted to compare the properties of point estimates, the distribution of option and bond prices, and the power of specification tests under maximum likelihood and Bayesian methods. Results suggest that maximum-likelihood-based asymptotic distributions have poor finitesample properties
A Bayesian approach to option pricing is presented, in which posterior inference about the underlyin...
No-arbitrage property provides a simple method for pricing financial derivatives. However, arbitrage...
This dissertation consists of three essays on modeling financial risk under Bayesian framework. The ...
Assets are often classified according to their risk and expected return. The estimates of these para...
This paper overviews some recent advances on simulation-based methods of estimating time series mode...
This paper overviews some recent advances on simulation-based methods of estimating time series mode...
In this paper we describe the challenges of Bayesian computation in Finance. We show that empirical ...
Summary. This chapter overviews some recent advances on simulation-based methods of estimating finan...
In this thesis we address problems associated with financial modelling from a Bayesian point of view...
Summary. This chapter overviews some recent advances on simulation-based methods of estimating finan...
Financial variables, such as asset returns in international stock and bond markets or interest rates...
Over the years, maximum likelihood estimation and Bayesian method became popular statistical tools i...
Understanding the dynamic mechanisms of some key financial and economic quantities plays a central r...
Bayesian Econometric Methods examines principles of Bayesian inference by posing a series of theoret...
Estimating continuous-time short-rate models is challenging since the likelihood function for most p...
A Bayesian approach to option pricing is presented, in which posterior inference about the underlyin...
No-arbitrage property provides a simple method for pricing financial derivatives. However, arbitrage...
This dissertation consists of three essays on modeling financial risk under Bayesian framework. The ...
Assets are often classified according to their risk and expected return. The estimates of these para...
This paper overviews some recent advances on simulation-based methods of estimating time series mode...
This paper overviews some recent advances on simulation-based methods of estimating time series mode...
In this paper we describe the challenges of Bayesian computation in Finance. We show that empirical ...
Summary. This chapter overviews some recent advances on simulation-based methods of estimating finan...
In this thesis we address problems associated with financial modelling from a Bayesian point of view...
Summary. This chapter overviews some recent advances on simulation-based methods of estimating finan...
Financial variables, such as asset returns in international stock and bond markets or interest rates...
Over the years, maximum likelihood estimation and Bayesian method became popular statistical tools i...
Understanding the dynamic mechanisms of some key financial and economic quantities plays a central r...
Bayesian Econometric Methods examines principles of Bayesian inference by posing a series of theoret...
Estimating continuous-time short-rate models is challenging since the likelihood function for most p...
A Bayesian approach to option pricing is presented, in which posterior inference about the underlyin...
No-arbitrage property provides a simple method for pricing financial derivatives. However, arbitrage...
This dissertation consists of three essays on modeling financial risk under Bayesian framework. The ...