6,418 research outputs found
Bahadur Representation for U-Quantiles of Dependent Data
U-quantiles are applied in robust statistics, like the Hodges-Lehmann
estimator of location for example. They have been analyzed in the case of
independent random variables with the help of a generalized Bahadur
representation. Our main aim is to extend these results to U-quantiles of
strongly mixing random variables and functionals of absolutely regular
sequences. We obtain the central limit theorem and the law of the iterated
logarithm for U-quantiles as straightforward corollaries. Furthermore, we
improve the existing result for sample quantiles of mixing data
The Role of Interfaces in Plasmon-Phonon Coupling in Semiconductor Quantum Wells and Superlattices
Zadanie pt. Digitalizacja i udostępnienie w Cyfrowym Repozytorium Uniwersytetu Łódzkiego kolekcji czasopism naukowych wydawanych przez Uniwersytet Łódzki nr 885/P-DUN/2014 zostało dofinansowane ze środków MNiSW w ramach działalności upowszechniającej naukę
The Sequential Empirical Process of a Random Walk in Random Scenery
A random walk in random scenery is given by
for a random walk and iid random
variables . In this paper, we will show the weak
convergence of the sequential empirical process, i.e. the centered and rescaled
empirical distribution function. The limit process shows a new type of
behavior, combining properties of the limit in the independent case (roughness
of the paths) and in the long range dependent case (self-similarity)
U-Processes, U-Quantile Processes and Generalized Linear Statistics of Dependent Data
Generalized linear statistics are an unifying class that contains
U-statistics, U-quantiles, L-statistics as well as trimmed and winsorized
U-statistics. For example, many commonly used estimators of scale fall into
this class. GL-statistics only have been studied under independence; in this
paper, we develop an asymptotic theory for GL-statistics of sequences which are
strongly mixing or L^1 near epoch dependent on an absolutely regular process.
For this purpose, we prove an almost sure approximation of the empirical
U-process by a Gaussian process. With the help of a generalized Bahadur
representation, it follows that such a strong invariance principle also holds
for the empirical U-quantile process and consequently for GL-statistics. We
obtain central limit theorems and laws of the iterated logarithm for
U-processes, U-quantile processes and GL-statistics as straightforward
corollaries.Comment: 24 page
Change-Point Detection and Bootstrap for Hilbert Space Valued Random Fields
The problem of testing for the presence of epidemic changes in random fields
is investigated. In order to be able to deal with general changes in the
marginal distribution, a Cram\'er-von Mises type test is introduced which is
based on Hilbert space theory. A functional central limit theorem for
-mixing Hilbert space valued random fields is proven. In order to avoid
the estimation of the long-run variance and obtain critical values, Shao's
dependent wild bootstrap method is adapted to this context. For this, a joint
functional central limit theorem for the original and the bootstrap sample is
shown. Finally, the theoretic results are supplemented by a short simulation
study
Studentized U-quantile processes under dependence with applications to change-point analysis
Many popular robust estimators are -quantiles, most notably the
Hodges-Lehmann location estimator and the scale estimator. We prove a
functional central limit theorem for the sequential -quantile process
without any moment assumptions and under weak short-range dependence
conditions. We further devise an estimator for the long-run variance and show
its consistency, from which the convergence of the studentized version of the
sequential -quantile process to a standard Brownian motion follows. This
result can be used to construct CUSUM-type change-point tests based on
-quantiles, which do not rely on bootstrapping procedures. We demonstrate
this approach in detail at the example of the Hodges-Lehmann estimator for
robustly detecting changes in the central location. A simulation study confirms
the very good robustness and efficiency properties of the test. Two real-life
data sets are analyzed
Law of the Iterated Logarithm for U-Statistics of Weakly Dependent Observations
The law of the iterated logarithm for partial sums of weakly dependent
processes was intensively studied by Walter Philipp in the late 1960s and
1970s. In this paper, we aim to extend these results to nondegenerate
U-statistics of data that are strongly mixing or functionals of an absolutely
regular process.Comment: typos corrrecte
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