Fractionally integrated autoregressive moving average processes have been widely and successfully used to model univariate time series exhibiting long range dependence. Vector and functional extensions of these processes have also been considered more recently. Here we rely on a spectral domain approach to extend this class of models in the form of a general Hilbert valued processes. In this framework, the usual univariate long memory parameter d is replaced by a long memory operator D acting on the Hilbert space. Our approach is compared to processes defined in the time domain that were previously introduced for modeling long range dependence in the context of functional time series
This paper generalizes the standard long memory modeling by assuming that the long memory parameter ...
International audienceThis paper generalizes the standard long memory modeling by assuming that the ...
A class of continuous-time models is developed for modelling data with heavy tails and long-range de...
Fractionally integrated autoregressive moving average (FIARMA) processes have been widely and succes...
In this paper, we review and clarify the construction of a spectral theory for weakly-stationary pro...
Long Range Dependence (LRD) in functional sequences is characterized in the spectral domain under s...
This thesis is concerned with high-dimensional time series in the context of long-range dependence a...
We introduce methods and theory for functional or curve time series with long-range dependence. The ...
Title: Long range dependence in time series Author: Alexander Till Department: Department of Probabi...
We introduce methods and theory for functional or curve time series with long-range dependence. The ...
Abstract. In this paper we investigate the properties of the estimator of degree of differencing the...
This study proposes a method of modeling long-memory phenomenon with time-varying long-memory charac...
We analyse asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
We analyze asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
Abstract. We introduce a class of Gaussian processes with stationary in-crements which exhibit long-...
This paper generalizes the standard long memory modeling by assuming that the long memory parameter ...
International audienceThis paper generalizes the standard long memory modeling by assuming that the ...
A class of continuous-time models is developed for modelling data with heavy tails and long-range de...
Fractionally integrated autoregressive moving average (FIARMA) processes have been widely and succes...
In this paper, we review and clarify the construction of a spectral theory for weakly-stationary pro...
Long Range Dependence (LRD) in functional sequences is characterized in the spectral domain under s...
This thesis is concerned with high-dimensional time series in the context of long-range dependence a...
We introduce methods and theory for functional or curve time series with long-range dependence. The ...
Title: Long range dependence in time series Author: Alexander Till Department: Department of Probabi...
We introduce methods and theory for functional or curve time series with long-range dependence. The ...
Abstract. In this paper we investigate the properties of the estimator of degree of differencing the...
This study proposes a method of modeling long-memory phenomenon with time-varying long-memory charac...
We analyse asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
We analyze asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
Abstract. We introduce a class of Gaussian processes with stationary in-crements which exhibit long-...
This paper generalizes the standard long memory modeling by assuming that the long memory parameter ...
International audienceThis paper generalizes the standard long memory modeling by assuming that the ...
A class of continuous-time models is developed for modelling data with heavy tails and long-range de...