335 research outputs found
Qualitative robustness of statistical functionals under strong mixing
A new concept of (asymptotic) qualitative robustness for plug-in estimators
based on identically distributed possibly dependent observations is introduced,
and it is shown that Hampel's theorem for general metrics still holds.
Since Hampel's theorem assumes the UGC property w.r.t. , that is,
convergence in probability of the empirical probability measure to the true
marginal distribution w.r.t. uniformly in the class of all admissible laws
on the sample path space, this property is shown for a large class of strongly
mixing laws for three different metrics . For real-valued observations, the
UGC property is established for both the Kolomogorov -metric and the
L\'{e}vy -metric, and for observations in a general locally compact and
second countable Hausdorff space the UGC property is established for a certain
metric generating the -weak topology. The key is a new uniform weak LLN
for strongly mixing random variables. The latter is of independent interest and
relies on Rio's maximal inequality.Comment: Published at http://dx.doi.org/10.3150/14-BEJ608 in the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
Functional delta-method for the bootstrap of quasi-Hadamard differentiable functionals
The functional delta-method provides a convenient tool for deriving the
asymptotic distribution of a plug-in estimator of a statistical functional from
the asymptotic distribution of the respective empirical process. Moreover, it
provides a tool to derive bootstrap consistency for plug-in estimators from
bootstrap consistency of empirical processes. It has recently been shown that
the range of applications of the functional delta-method for the asymptotic
distribution can be considerably enlarged by employing the notion of
quasi-Hadamard differentiability. Here we show in a general setting that this
enlargement carries over to the bootstrap. That is, for quasi-Hadamard
differentiable functionals bootstrap consistency of the plug-in estimator
follows from bootstrap consistency of the respective empirical process. This
enlargement often requires convergence in distribution of the bootstrapped
empirical process w.r.t.\ a nonuniform sup-norm. The latter is not problematic
as will be illustrated by means of examples
Continuous mapping approach to the asymptotics of - and -statistics
We derive a new representation for - and -statistics. Using this
representation, the asymptotic distribution of - and -statistics can be
derived by a direct application of the Continuous Mapping theorem. That novel
approach not only encompasses most of the results on the asymptotic
distribution known in literature, but also allows for the first time a unifying
treatment of non-degenerate and degenerate - and -statistics. Moreover,
it yields a new and powerful tool to derive the asymptotic distribution of very
general - and -statistics based on long-memory sequences. This will be
exemplified by several astonishing examples. In particular, we shall present
examples where weak convergence of - or -statistics occurs at the rate
and , respectively, when is the rate of weak convergence
of the empirical process. We also introduce the notion of asymptotic (non-)
degeneracy which often appears in the presence of long-memory sequences.Comment: Published in at http://dx.doi.org/10.3150/13-BEJ508 the Bernoulli
(http://isi.cbs.nl/bernoulli/) by the International Statistical
Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm
- …