21 research outputs found
Random sampling of long-memory stationary processe
This paper investigates the second order properties of a stationary process
after random sampling. While a short memory process gives always rise to a
short memory one, we prove that long-memory can disappear when the sampling law
has heavy enough tails. We prove that under rather general conditions the
existence of the spectral density is preserved by random sampling. We also
investigate the effects of deterministic sampling on seasonal long-memory
Random discretization of stationary continuous time processes
This paper investigates the second order properties of a stationarycontinuous time process after random sampling. While a short memory process gives alwaysrise to a short memory one, we prove that long-memory can disappearwhen the sampling law has very heavy tails. Despite the fact thatthe normality of the process is not maintained by random sampling, thenormalized partial sum process converges to the fractional Brownianmotion, at least when the long memory parameter is perserved
Functional Limit Theorem for the Empirical Process of a Class of Bernoulli Shifts with Long Memory
International audienceWe prove a functional central limit theorem for the empirical process of a stationary process , where is a long memory moving average in i.i.d. r.v.'s , and is a weakly dependent nonlinear Bernoulli shift. Conditions of weak dependence of are written in terms of norms of shift-cut differences . Examples of Bernoulli shifts are discussed. The limit empirical process is a degenerated process of the form , where is the marginal p.d.f. of and is a standard normal r.v. The proof is based on a uniform reduction principle for the empirical process
Long memory properties and covariance structure of the EGARCH model
The EGARCH model of Nelson [29] is one of the most
successful
ARCH models which may exhibit characteristic asymmetries of
financial time series, as well as long memory. The paper studies
the covariance structure and dependence properties of the EGARCH
and some related stochastic volatility models. We show that the
large time behavior of the covariance of powers of the (observed)
ARCH process is determined by the behavior of the covariance of
the (linear) log-volatility process; in particular, a hyperbolic
decay of the later covariance implies a similar hyperbolic decay
of the former covariances. We show, in this case, that normalized
partial sums of powers of the observed process tend to fractional
Brownian motion. The paper also obtains a (functional) CLT for the
corresponding partial sums' processes of the EGARCH model with
short and moderate memory. These results are applied to study
asymptotic behavior of tests for long memory using the R/S
statistic