A sequential Monte Carlo method for estimating GARCH models subject to an unknown number of structural breaks is proposed. Particle filtering techniques allow for fast and efficient updates of posterior quantities and forecasts in real-time. The method conveniently deals with the path dependence problem that arises in these type of models. The performance of the method is shown to work well using simulated data. Applied to daily NASDAQ returns, the evidence favors a partial structural break specification in which only the intercept of the conditional variance equation has breaks compared to the full structural break specification in which all parameters are subject to change. The empirical application underscores the importance of model ass...
This paper compares the forecasting performance of different models which have been proposed for for...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
We present a novel GARCH model that accounts for time varying, state dependent, persistence in the v...
We present an estimation and forecasting method, based on a differential evolution MCMC method, for ...
Financial data generally span a long time period and are well known to be subject to structural chan...
This thesis consists of three essays in empirical finance and macroeconomics. The first essay propos...
We present an algorithm, based on a differential evolution MCMC method, for Bayesian inference in AR...
Outliers and structural breaks occur quite frequently in time series data. Whereas outliers often co...
The paper evaluates the performance of several recently proposed tests for structural breaks in cond...
GARCH volatility models with fixed parameters are too restrictive for long time series due to breaks...
The paper evaluates the performance of several recently proposed tests for structural breaks in cond...
This thesis focusses on application as well as modifications of sequential Monte Carlo (SMC) utilisi...
Particle Gibbs with ancestor sampling (PG-AS) is a new tool in the family of sequential Monte Carlo ...
Generalized Auto-regressive Conditional Heteroskedastic (GARCH) models with fixed parameters are typ...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
This paper compares the forecasting performance of different models which have been proposed for for...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
We present a novel GARCH model that accounts for time varying, state dependent, persistence in the v...
We present an estimation and forecasting method, based on a differential evolution MCMC method, for ...
Financial data generally span a long time period and are well known to be subject to structural chan...
This thesis consists of three essays in empirical finance and macroeconomics. The first essay propos...
We present an algorithm, based on a differential evolution MCMC method, for Bayesian inference in AR...
Outliers and structural breaks occur quite frequently in time series data. Whereas outliers often co...
The paper evaluates the performance of several recently proposed tests for structural breaks in cond...
GARCH volatility models with fixed parameters are too restrictive for long time series due to breaks...
The paper evaluates the performance of several recently proposed tests for structural breaks in cond...
This thesis focusses on application as well as modifications of sequential Monte Carlo (SMC) utilisi...
Particle Gibbs with ancestor sampling (PG-AS) is a new tool in the family of sequential Monte Carlo ...
Generalized Auto-regressive Conditional Heteroskedastic (GARCH) models with fixed parameters are typ...
We develop a Markov-switching GARCH model (MS-GARCH) wherein the conditional mean and variance switc...
This paper compares the forecasting performance of different models which have been proposed for for...
GARCH models are widely used in financial econometrics. However, we show by mean of a simple simulat...
We present a novel GARCH model that accounts for time varying, state dependent, persistence in the v...