Realized volatility is studied using nonlinear and highly persistent dynamics. In particular, a model is proposed that simultaneously captures long memory and nonlinearities in which level and persistence shift through a Markov switching dynamics. Inference is based on an efficient Markov chain Monte Carlo (MCMC) algorithm that is used to estimate parameters, latent process and predictive densities. The in-sample results show that both long memory and nonlinearities are significant and improve the description of the data. The out-sample results at several forecast horizons show that introducing these nonlinearities produces superior forecasts over those obtained using nested models
We propose a discrete-time stochastic volatility model in which regime switching serves three purpos...
With the recent availability of high-frequency financial data the long range dependence of volatilit...
We propose a discrete-time stochastic volatility model in which regime switching serves three purpos...
none2noRealized volatility is studied using nonlinear and highly persistent dynamics. In particular,...
Goal of this paper is to analyze and forecast realized volatility through nonlinear and highly persi...
Goal of this paper is to analyze and forecast realized volatility through nonlinear and highly persi...
Goal of this paper is to analyze models to forecast the realized volatility. In particular, we prop...
It is well known that accurately measuring and forecasting financial volatility plays a central role...
ABSTRACT. We study the simultaneous occurrence of long memory and nonlinear effects such as struc-tu...
Abstract This paper discusses the existence of spurious long memory in common nonlinear time series ...
This paper discusses the existence of spurious long memory in common nonlinear time series models, n...
Inspired by the idea that regime switching may give rise to persistence that is observationally equi...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
We propose a stochastic volatility model where the conditional variance of asset returns switches ac...
We propose a discrete-time stochastic volatility model in which regime switching serves three purpos...
With the recent availability of high-frequency financial data the long range dependence of volatilit...
We propose a discrete-time stochastic volatility model in which regime switching serves three purpos...
none2noRealized volatility is studied using nonlinear and highly persistent dynamics. In particular,...
Goal of this paper is to analyze and forecast realized volatility through nonlinear and highly persi...
Goal of this paper is to analyze and forecast realized volatility through nonlinear and highly persi...
Goal of this paper is to analyze models to forecast the realized volatility. In particular, we prop...
It is well known that accurately measuring and forecasting financial volatility plays a central role...
ABSTRACT. We study the simultaneous occurrence of long memory and nonlinear effects such as struc-tu...
Abstract This paper discusses the existence of spurious long memory in common nonlinear time series ...
This paper discusses the existence of spurious long memory in common nonlinear time series models, n...
Inspired by the idea that regime switching may give rise to persistence that is observationally equi...
Dynamic volatility and correlation models with fixed parameters are restrictive for time series subj...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
We propose a stochastic volatility model where the conditional variance of asset returns switches ac...
We propose a discrete-time stochastic volatility model in which regime switching serves three purpos...
With the recent availability of high-frequency financial data the long range dependence of volatilit...
We propose a discrete-time stochastic volatility model in which regime switching serves three purpos...