Abstract This paper proposes a framework for the modeling, inference and forecasting of volatility in the presence of level shifts of unknown timing, magnitude and frequency. First, we consider a stochastic volatility model comprising both a level shift and a short-memory component, with the former modeled as a compound binomial process and the latter as an AR(1). Next, we adopt a Bayesian approach for inference and develop algorithms to obtain posterior distributions of the parameters and the two latent components. Then, we apply the model to daily S&P 500 and NASDAQ returns over the period 1980.1-2010.12. The results show that although the occurrence of a level shift is rare, about once every two years, this component clearly contribu...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
This article proposes a novel stochastic volatility (SV) model that draws from the existing literatu...
Abstract Empirical …ndings related to the time series properties of stock returns volatility indicat...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
We consider the estimation of a random level shift model for which the series of interest is the sum...
We investigate high-frequency volatility models for analyzing intradaily tick by tick stock price ch...
We propose a stochastic volatility model where the conditional variance of asset returns switches ac...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
We develop a Markov-Switching Autoregressive Conditional Intensity (MS-ACI) model with time-varying ...
This thesis conducts three exercises on volatility modeling of financial assets. We are essentially ...
This paper proposes a new model for modeling and forecasting the volatility of asset markets. We sug...
Planning for future movements in asset prices and understanding the variation in the return on asset...
This paper proposes a discrete-state stochastic volatility model with duration-dependent mixing. The...
This paper proposes a discrete-state stochastic volatility model with duration-dependent mixing. The...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
This article proposes a novel stochastic volatility (SV) model that draws from the existing literatu...
Abstract Empirical …ndings related to the time series properties of stock returns volatility indicat...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
We consider the estimation of a random level shift model for which the series of interest is the sum...
We investigate high-frequency volatility models for analyzing intradaily tick by tick stock price ch...
We propose a stochastic volatility model where the conditional variance of asset returns switches ac...
We adopt a regime switching approach to study concrete financial time series with particular emphasi...
We develop a Markov-Switching Autoregressive Conditional Intensity (MS-ACI) model with time-varying ...
This thesis conducts three exercises on volatility modeling of financial assets. We are essentially ...
This paper proposes a new model for modeling and forecasting the volatility of asset markets. We sug...
Planning for future movements in asset prices and understanding the variation in the return on asset...
This paper proposes a discrete-state stochastic volatility model with duration-dependent mixing. The...
This paper proposes a discrete-state stochastic volatility model with duration-dependent mixing. The...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
In the study we introduce an extension to a stochastic volatility in mean model (SV-M), allowing for...
This article proposes a novel stochastic volatility (SV) model that draws from the existing literatu...