We study asymptotic properties of the log-periodogram semiparametric estima
te of the memory parameter d for non-stationary(d greater than or equal to
1/2) time series with Gaussian increments, extending the results of Robinso
n (1995) for stationary and invertible Gaussian processes. We generalize th
e definition of the memory parameter d for non-stationary processes in term
s of the (successively) differentiated series. We obtain that the log-perio
dogram estimate is asymptotically normal for d is an element of [1/2, 3/4)
and still consistent for d is an element of [1/2, 1). We show that with ade
quate data tapers, a modified estimate is consistent and asymptotically nor
mal distributed for any d, including both non-stationary and non-invertible
processes. The estimates are invariant to the presence of certain determin
istic trends, without any need of estimation. (C) 1999 Elsevier Science S.A
. All rights reserved.