We consider processes with second order long range dependence resulting from heavy tailed durations. We refer to this phenomenon as duration- driven long range dependence (DDLRD), as opposed to the more widely studied linear long range dependence based on fractional differencing of an $iid$ process. We consider in detail two specific processes having DDLRD, originally presented in Taqqu and Levy (1986), and Parke (1999). For these processes, we obtain the limiting distribution of suitably standardized discrete Fourier transforms (DFTs) and sample autocovariances. At low frequencies, the standardized DFTs converge to a stable law, as do the standardized autocovariances at fixed lags. Finite collections of standardized autocovariances at a fi...
We analyse asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
This paper analyses a class of nonlinear time series models exhibiting long memory. These processes ...
We consider processes with second order long range dependence resulting from heavy tailed durations....
International audienceIn the past few years, a certain number of authors have proposed analysis meth...
We show the consistency of the log-periodogram estimate of the long memory parameter íor long range ...
A commonly used defining property of long memory time series is the power law decay of the autocovari...
The long range dependence paradigm appears to be a suitable description of the data generating proce...
This thesis is concerned with high-dimensional time series in the context of long-range dependence a...
This study investigates the effects of varying sampling intervals on the long memory characteristic...
We study the inference of long-range correlations by means of Detrended Fluctuation Analysis (DFA) ...
The detection of long-range dependence in time series analysis is an important task to which this pa...
A new frequency-domain test statistic is introduced to test for short memory versus long memory. We ...
Previous work on log-periodogram regression in time series with long range dependence is reviewed. T...
The thesis is made up of a number of studies involving long-range dependence (LRD), that is, a slow...
We analyse asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
This paper analyses a class of nonlinear time series models exhibiting long memory. These processes ...
We consider processes with second order long range dependence resulting from heavy tailed durations....
International audienceIn the past few years, a certain number of authors have proposed analysis meth...
We show the consistency of the log-periodogram estimate of the long memory parameter íor long range ...
A commonly used defining property of long memory time series is the power law decay of the autocovari...
The long range dependence paradigm appears to be a suitable description of the data generating proce...
This thesis is concerned with high-dimensional time series in the context of long-range dependence a...
This study investigates the effects of varying sampling intervals on the long memory characteristic...
We study the inference of long-range correlations by means of Detrended Fluctuation Analysis (DFA) ...
The detection of long-range dependence in time series analysis is an important task to which this pa...
A new frequency-domain test statistic is introduced to test for short memory versus long memory. We ...
Previous work on log-periodogram regression in time series with long range dependence is reviewed. T...
The thesis is made up of a number of studies involving long-range dependence (LRD), that is, a slow...
We analyse asymptotic properties of the discrete Fourier transform and the periodogram of time serie...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
This paper analyses a class of nonlinear time series models exhibiting long memory. These processes ...