We consider a new concept of weak dependence, introduced by
Doukhan and Louhichi [Stochastic Process. Appl. 84 (1999)
313–342], which is more general than the classical frameworks of mixing
or associated sequences. The new notion is broad enough to include many
interesting examples such as very general Bernoulli shifts, Markovian models or
time series bootstrap processes with discrete innovations.
¶ Under such a weak dependence assumption, we investigate
nonparametric regression which represents one (among many) important
statistical estimation problems. We justify in this more general setting the
“whitening by windowing principle” for nonparametric regression,
saying that asymptotic properties remain in first order the same as for
independent samples. The proofs borrow previously used strategies, but precise
arguments are developed under the new aspect of general weak dependence.
@article{1021379859,
author = {Nze, Patrick Ango and B\"uhlmann, Peter and Doukhan, Paul},
title = {Weak dependence beyond mixing and asymptotics for nonparametric
regression},
journal = {Ann. Statist.},
volume = {30},
number = {1},
year = {2002},
pages = { 397-430},
language = {en},
url = {http://dml.mathdoc.fr/item/1021379859}
}
Nze, Patrick Ango; Bühlmann, Peter; Doukhan, Paul. Weak dependence beyond mixing and asymptotics for nonparametric
regression. Ann. Statist., Tome 30 (2002) no. 1, pp. 397-430. http://gdmltest.u-ga.fr/item/1021379859/