Financial time series analysis deals with the understanding of data collected on financial markets. Several parametric distribution models have been entertained for describing, estimating and predicting the dynamics of financial time series. Alternatively, this article considers a Bayesian semiparametric approach. In particular, the usual parametric distributional assumptions of the GARCH-type models are relaxed by entertaining the class of location-scale mixtures of Gaussian distributions with a Dirichlet process prior on the mixing distribution, leading to a Dirichlet process mixture model. The proposed specification allows for a greater exibility in capturing both the skewness and kurtosis frequently observed in financial returns...
This dissertation consists of three essays on modeling financial risk under Bayesian framework. The ...
The s-period ahead Value-at-Risk (VaR) for a portfolio of dimension n is considered and its Bayesian...
This paper proposes the use of Bayesian approach to implement Value at Risk (VaR) model for both lin...
Financial time series analysis deals with the understanding of data collected on financial markets....
In this chapter we discuss the use of Bayesian nonparametric methods for time series anal- ysis. Fir...
Bayesian inference and prediction for a generalized autoregressive conditional heteroskedastic (GARC...
This paper introduces the class of Bayesian infinite mixture time series models first proposed in La...
Value-at-Risk (VaR) forecasting via a computational Bayesian framework is considered. A range of par...
This thesis consists of three chapters in Bayesian financial econometrics. The three chapters apply ...
The present PhD dissertation consists of two independent job-market papers, therefore each chapter r...
Abstract: This paper extends the existing fully parametric Bayesian literature on stochastic volatil...
Extreme value theory studies the tail behavior of a stochastic process, and plays a key role in a wi...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...
This thesis presents a class of discrete time univariate stochastic volatility models using Bayesian...
Bayesian semi-parametric estimation has proven effective for quantile estimation in general and spec...
This dissertation consists of three essays on modeling financial risk under Bayesian framework. The ...
The s-period ahead Value-at-Risk (VaR) for a portfolio of dimension n is considered and its Bayesian...
This paper proposes the use of Bayesian approach to implement Value at Risk (VaR) model for both lin...
Financial time series analysis deals with the understanding of data collected on financial markets....
In this chapter we discuss the use of Bayesian nonparametric methods for time series anal- ysis. Fir...
Bayesian inference and prediction for a generalized autoregressive conditional heteroskedastic (GARC...
This paper introduces the class of Bayesian infinite mixture time series models first proposed in La...
Value-at-Risk (VaR) forecasting via a computational Bayesian framework is considered. A range of par...
This thesis consists of three chapters in Bayesian financial econometrics. The three chapters apply ...
The present PhD dissertation consists of two independent job-market papers, therefore each chapter r...
Abstract: This paper extends the existing fully parametric Bayesian literature on stochastic volatil...
Extreme value theory studies the tail behavior of a stochastic process, and plays a key role in a wi...
In this paper, we perform Bayesian inference and prediction for a GARCH model where the innovations ...
This thesis presents a class of discrete time univariate stochastic volatility models using Bayesian...
Bayesian semi-parametric estimation has proven effective for quantile estimation in general and spec...
This dissertation consists of three essays on modeling financial risk under Bayesian framework. The ...
The s-period ahead Value-at-Risk (VaR) for a portfolio of dimension n is considered and its Bayesian...
This paper proposes the use of Bayesian approach to implement Value at Risk (VaR) model for both lin...