The ARCH process (R. F. Engle, 1982) constitutes a paradigmatic generator of stochastic time series with time-dependent variance like it appears on a wide broad of systems besides economics in which ARCH was born. Although the ARCH process captures the so-called "volatility clustering" and the asymptotic power-law probability density distribution of the random variable, it is not capable to reproduce further statistical properties of many of these time series such as: the strong persistence of the instantaneous variance characterised by large values of the Hurst exponent (H > 0.8), and asymptotic power-law decay of the absolute values self-correlation function. By means of considering an effective return obtained from a correlation of past ...
In this paper an asymmetric autoregressive conditional heteroskedasticity (ARCH) model and a Levy-st...
Abstract. The EGARCH model of Nelson [29] is one of the most successful ARCH models which may exhibi...
International audienceThe volatility modeling for autoregressive univariate time series is considere...
We introduce a generalization of the well-known ARCH process, widely used for generating uncorrelate...
We consider ARCH processes with persistent covariates and provide asymptotic theories that explain h...
We consider ARCH processes with persistent covariates and provide asymptotic theories that explain h...
We consider a volatility model, named ARCH-NNH model, that is specifically an ARCH process with a no...
We consider ARCH processes with persistent covariates and provide asymptotic theories that explain h...
This chapter evaluates the most important theoretical developments in ARCH type modeling of time-var...
Many economic and financial time series have been found to exhibit dynamics in variance; that is, th...
We review the notion of linearity of time series, and show that ARCH or stochastic volatility (SV) p...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
This dissertation focuses on quadratic ARCH models with long memory. The class of ARCH models was in...
Engle's ARCH algorithm is a generator of stochastic time series for financial returns (and similar q...
This article considers the volatility modeling for autoregressive univariate time series. A benchmar...
In this paper an asymmetric autoregressive conditional heteroskedasticity (ARCH) model and a Levy-st...
Abstract. The EGARCH model of Nelson [29] is one of the most successful ARCH models which may exhibi...
International audienceThe volatility modeling for autoregressive univariate time series is considere...
We introduce a generalization of the well-known ARCH process, widely used for generating uncorrelate...
We consider ARCH processes with persistent covariates and provide asymptotic theories that explain h...
We consider ARCH processes with persistent covariates and provide asymptotic theories that explain h...
We consider a volatility model, named ARCH-NNH model, that is specifically an ARCH process with a no...
We consider ARCH processes with persistent covariates and provide asymptotic theories that explain h...
This chapter evaluates the most important theoretical developments in ARCH type modeling of time-var...
Many economic and financial time series have been found to exhibit dynamics in variance; that is, th...
We review the notion of linearity of time series, and show that ARCH or stochastic volatility (SV) p...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
This dissertation focuses on quadratic ARCH models with long memory. The class of ARCH models was in...
Engle's ARCH algorithm is a generator of stochastic time series for financial returns (and similar q...
This article considers the volatility modeling for autoregressive univariate time series. A benchmar...
In this paper an asymmetric autoregressive conditional heteroskedasticity (ARCH) model and a Levy-st...
Abstract. The EGARCH model of Nelson [29] is one of the most successful ARCH models which may exhibi...
International audienceThe volatility modeling for autoregressive univariate time series is considere...