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This paper presents a method for Bayesian nonparametric analysis of the return distribution in a stochastic volatility model. The distribution of the logarithm of the squared return is flexibly modelled using an infinite mixture of Normal distributions. This allows efficient Markov chain Monte...
Persistent link: https://www.econbiz.de/10013133054
A Bayesian semiparametric stochastic volatility model for financial data is developed. This estimates the return distribution from the data allowing for stylized facts such as heavy tails and jumps in prices whilst also allowing for correlation between the returns and changes in volatility, the...
Persistent link: https://www.econbiz.de/10013118198
A novel Bayesian method for inference in dynamic regression models is proposed where both the values of the regression coefficients and the importance of the variables are allowed to change over time. We focus on forecasting and so the parsimony of the model is important for good performance. A...
Persistent link: https://www.econbiz.de/10013091731
This paper proposes a novel volatility model that draws from the existing literature on autoregressive stochastic volatility models, aggregation of autoregressive processes, and Bayesian nonparametric modelling to create a dynamic SV model that can explain long range dependence. The volatility...
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This paper introduces a new model for transaction prices in the presence of market microstructure noise in order to study the properties of the price process on two different time scales, namely transaction time where prices are sampled with every transaction and tick time where prices are...
Persistent link: https://www.econbiz.de/10012774173
We consider jointly modelling a finite collection of quantiles over time under a Bayesian nonparametric framework. Formal Bayesian inference on quantiles is challenging since we need access to both the quantile function and the likelihood (which is given by the derivative of the inverse quantile...
Persistent link: https://www.econbiz.de/10012900894