The COGARCH (COntinuous Generalized Auto-Regressive Conditional Heteroschedastic) model can be considered as a continuous version of the well known GARCH discrete time model. They are driven by general L evy processes and the resulting volatility process satis es a stochastic di erential equation. The main di erence between COGARCH models and other stochastic volatility models is that there is only one source of randomness (the L evy process) and all the stylized feature are captured by the dependance structure of the model as in the GARCH models. A general method to calculate the moment of higher order of the COGARCH(1,1) model is presented. A general formula to calculate all the joint and the conditional moments is also provided. The expl...
In this paper, we extend the concept of the news impact curve of volatility developed by Engle and N...
In this paper we show how to simulate and estimate a COGARCH(p, q) model in the R package yuima. Sev...
This paper provides a probabilistic and statistical comparison of the log-GARCH and EGARCH models, w...
COGARCH models are continuous time version of the well known GARCH models of financial returns. They...
Financial data are as a rule asymmetric, although most econometric models are symmetric. This applie...
COGARCH models are continuous time version of the well known GARCH models of financial returns. The...
This article analyses the statistical properties of that general class of conditional heteroscedasti...
Summary. We compare the probabilistic properties of the non-Gaussian Ornstein-Uhlenbeck based stocha...
This paper proposes a contemporaneous-threshold smooth transition GARCH (or C-STGARCH) model for dyn...
AbstractCOGARCH is an extension of the GARCH time series concept to continuous time, which has been ...
In this article, we construct a sequence of discrete-time stochastic processes that converges in the...
This thesis investigates simulation-based methods to estimate time series processes. We apply Indire...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...
In this dissertation, we employ the generalized method of moments (GMM) to estimate model parameters...
We suggest moment estimators for the parameters of a continuous time GARCH(1,1) process based on eq...
In this paper, we extend the concept of the news impact curve of volatility developed by Engle and N...
In this paper we show how to simulate and estimate a COGARCH(p, q) model in the R package yuima. Sev...
This paper provides a probabilistic and statistical comparison of the log-GARCH and EGARCH models, w...
COGARCH models are continuous time version of the well known GARCH models of financial returns. They...
Financial data are as a rule asymmetric, although most econometric models are symmetric. This applie...
COGARCH models are continuous time version of the well known GARCH models of financial returns. The...
This article analyses the statistical properties of that general class of conditional heteroscedasti...
Summary. We compare the probabilistic properties of the non-Gaussian Ornstein-Uhlenbeck based stocha...
This paper proposes a contemporaneous-threshold smooth transition GARCH (or C-STGARCH) model for dyn...
AbstractCOGARCH is an extension of the GARCH time series concept to continuous time, which has been ...
In this article, we construct a sequence of discrete-time stochastic processes that converges in the...
This thesis investigates simulation-based methods to estimate time series processes. We apply Indire...
The paper considers a volatility model that includes a persistent, integrated or nearly integrated, ...
In this dissertation, we employ the generalized method of moments (GMM) to estimate model parameters...
We suggest moment estimators for the parameters of a continuous time GARCH(1,1) process based on eq...
In this paper, we extend the concept of the news impact curve of volatility developed by Engle and N...
In this paper we show how to simulate and estimate a COGARCH(p, q) model in the R package yuima. Sev...
This paper provides a probabilistic and statistical comparison of the log-GARCH and EGARCH models, w...