We introduce a generalization of the well-known ARCH process, widely used for generating uncorrelated stochastic time series with long-term non-Gaussian distributions and long-lasting correlations in the (instantaneous) standard deviation exhibiting a clustering profile. Specifically, inspired by the fact that in a variety of systems impacting events are hardly forgot, we split the process into two different regimes: a first one for regular periods where the average volatility of the fluctuations within a certain period of time is below a certain threshold, , and another one when the local standard deviation outnumbers . In the former situation we use standard rules for heteroscedastic processes whereas in the latter case the system starts ...
In this article, we show that in times series models with in-mean and level effects, persistence wil...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
We consider autoregressive conditional heteroskedasticity (ARCH) processes in which the variance sig...
The ARCH process (R. F. Engle, 1982) constitutes a paradigmatic generator of stochastic time series ...
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...
This article considers the volatility modeling for autoregressive univariate time series. A benchmar...
In this manuscript, we analytically and numerically study statistical properties of an heteroskedast...
We present several notions of high-level dependence for stochastic processes, which have appeared in...
Many economic and financial time series have been found to exhibit dynamics in variance; that is, th...
We investigate the time series properties of a volatility model, whose conditional variance is speci...
Since the introduction of the autoregressive conditional heteroskedastic (ARCH) model in Engle (1982...
International audienceThe volatility modeling for autoregressive univariate time series is considere...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...
AbstractExtreme values of a stationary, multivariate time series may exhibit dependence across coord...
In this article, we show that in times series models with in-mean and level effects, persistence wil...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
We consider autoregressive conditional heteroskedasticity (ARCH) processes in which the variance sig...
The ARCH process (R. F. Engle, 1982) constitutes a paradigmatic generator of stochastic time series ...
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...
This article considers the volatility modeling for autoregressive univariate time series. A benchmar...
In this manuscript, we analytically and numerically study statistical properties of an heteroskedast...
We present several notions of high-level dependence for stochastic processes, which have appeared in...
Many economic and financial time series have been found to exhibit dynamics in variance; that is, th...
We investigate the time series properties of a volatility model, whose conditional variance is speci...
Since the introduction of the autoregressive conditional heteroskedastic (ARCH) model in Engle (1982...
International audienceThe volatility modeling for autoregressive univariate time series is considere...
Extreme values of a stationary, multivariate time series may exhibit dependence across coordinates a...
AbstractExtreme values of a stationary, multivariate time series may exhibit dependence across coord...
In this article, we show that in times series models with in-mean and level effects, persistence wil...
In this paper the class of ARCH(∞) models is generalized to the nonsta-tionary class of ARCH(∞) mode...
We consider autoregressive conditional heteroskedasticity (ARCH) processes in which the variance sig...