This paper introduces a new family of Bayesian semi-parametric models for the conditional distribution of daily stock index returns. The proposed models capture key stylized facts of such returns, namely heavy tails, asymmetry, volatility clustering, and the ‘leverage effect’. A Bayesian nonparametric prior is used to generate random density functions that are unimodal and asymmetric.Volatility is modelled parametrically. The new model is applied to the daily re- turns of the S&P 500, FTSE 100, and EUROSTOXX 50 indices and is compared to GARCH, Stochastic Volatility, and other Bayesian semi-parametric models
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
We use an asymmetric dynamic conditional correlation (ADCC) GJR-GARCH model to estimate the time-va...
As GARCH models and stable Paretian distributions have been revisited in the recent past with the pa...
This paper introduces a new family of Bayesian semi-parametric models for the conditional distributi...
This paper derives a dynamic conditional beta representation using a Bayesian semiparametric multiva...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
It has long been recognised that the return volatility of financial assets tends to vary over time w...
Stochastic volatility (SV) models mimic many of the stylized facts attributed to time series of ass...
This paper introduces several new Bayesian nonparametric models suitable for capturing the unknown c...
In this paper, we let the data speak for itself about the existence of volatility feedback and the o...
Financial time series analysis deals with the understanding of data collected on financial markets....
This paper investigates the economic importance of nonparametrically/semiparametrically modelling th...
<p>In this article, novel joint semiparametric spline-based modeling of conditional mean and volatil...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
A new GARCH-type model for autoregressive conditional volatility, skewness, and kurtosis is proposed...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
We use an asymmetric dynamic conditional correlation (ADCC) GJR-GARCH model to estimate the time-va...
As GARCH models and stable Paretian distributions have been revisited in the recent past with the pa...
This paper introduces a new family of Bayesian semi-parametric models for the conditional distributi...
This paper derives a dynamic conditional beta representation using a Bayesian semiparametric multiva...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
It has long been recognised that the return volatility of financial assets tends to vary over time w...
Stochastic volatility (SV) models mimic many of the stylized facts attributed to time series of ass...
This paper introduces several new Bayesian nonparametric models suitable for capturing the unknown c...
In this paper, we let the data speak for itself about the existence of volatility feedback and the o...
Financial time series analysis deals with the understanding of data collected on financial markets....
This paper investigates the economic importance of nonparametrically/semiparametrically modelling th...
<p>In this article, novel joint semiparametric spline-based modeling of conditional mean and volatil...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
A new GARCH-type model for autoregressive conditional volatility, skewness, and kurtosis is proposed...
The use of Bayesian nonparametrics models has increased rapidly over the last few decades driven by ...
We use an asymmetric dynamic conditional correlation (ADCC) GJR-GARCH model to estimate the time-va...
As GARCH models and stable Paretian distributions have been revisited in the recent past with the pa...