80 research outputs found

    Empirical Processes of Multidimensional Systems with Multiple Mixing Properties

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    We establish a multivariate empirical process central limit theorem for stationary Rd\R^d-valued stochastic processes (Xi)i≥1(X_i)_{i\geq 1} under very weak conditions concerning the dependence structure of the process. As an application we can prove the empirical process CLT for ergodic torus automorphisms. Our results also apply to Markov chains and dynamical systems having a spectral gap on some Banach space of functions. Our proof uses a multivariate extension of the techniques introduced by Dehling, Durieu and Voln\'y \cite{DehDurVol09} in the univariate case. As an important technical ingredient, we prove a (2p)(2p)th moment bound for partial sums in multiple mixing systems.Comment: to be published in Stochastic Processes and their Application

    Law of the Iterated Logarithm for U-Statistics of Weakly Dependent Observations

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    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

    The empirical process of some long-range dependent sequences with an application to U-statistics

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    Let (Xj)∞ j = 1 be a stationary, mean-zero Gaussian process with covariances r(k) = EXk + 1 X1 satisfying r(0) = 1 and r(k) = k-DL(k) where D is small and L is slowly varying at infinity. Consider the two-parameter empirical process for G(Xj), {FN(x,t)=1N∑j=1[Nt][1{G(Xj)≤x}−P(G(X1)≤x)];//−∞<x<+∞,0≤t≤1},\bigg\{F_N(x, t) = \frac{1}{N} \sum^{\lbrack Nt \rbrack}_{j = 1} \lbrack 1\{G(X_j) \leq x\} - P(G(X_1) \leq x) \rbrack; // -\infty < x < + \infty, 0 \leq t \leq 1\bigg\}, where G is any measurable function. Noncentral limit theorems are obtained for FN(x, t) and they are used to derive the asymptotic behavior of some suitably normalized von Mises statistics and U-statistics based on the G(Xj)'s. The limiting processes are structurally different from those encountered in the i.i.d. case

    Approximating class approach for empirical processes of dependent sequences indexed by functions

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    We study weak convergence of empirical processes of dependent data (Xi)i≥0(X_i)_{i\geq0}, indexed by classes of functions. Our results are especially suitable for data arising from dynamical systems and Markov chains, where the central limit theorem for partial sums of observables is commonly derived via the spectral gap technique. We are specifically interested in situations where the index class F{\mathcal{F}} is different from the class of functions ff for which we have good properties of the observables (f(Xi))i≥0(f(X_i))_{i\geq0}. We introduce a new bracketing number to measure the size of the index class F{\mathcal{F}} which fits this setting. Our results apply to the empirical process of data (Xi)i≥0(X_i)_{i\geq0} satisfying a multiple mixing condition. This includes dynamical systems and Markov chains, if the Perron-Frobenius operator or the Markov operator has a spectral gap, but also extends beyond this class, for example, to ergodic torus automorphisms.Comment: Published in at http://dx.doi.org/10.3150/13-BEJ525 the Bernoulli (http://isi.cbs.nl/bernoulli/) by the International Statistical Institute/Bernoulli Society (http://isi.cbs.nl/BS/bshome.htm

    New Techniques for Empirical Process of Dependent Data

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    We present a new technique for proving empirical process invariance principle for stationary processes (Xn)n≥0(X_n)_{n\geq 0}. The main novelty of our approach lies in the fact that we only require the central limit theorem and a moment bound for a restricted class of functions (f(Xn))n≥0(f(X_n))_{n\geq 0}, not containing the indicator functions. Our approach can be applied to Markov chains and dynamical systems, using spectral properties of the transfer operator. Our proof consists of a novel application of chaining techniques

    Two-Sample U-Statistic Processes for Long-Range Dependent Data

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    Motivated by some common-change point tests, we investigate the asymptotic distribution of the U-statistic process Un(t)=∑i=1[nt]∑j=[nt]+1nh(Xi,Xj)U_n(t)=\sum_{i=1}^{[nt]}\sum_{j=[nt]+1}^n h(X_i,X_j), 0≤t≤10\leq t\leq 1, when the underlying data are long-range dependent. We present two approaches, one based on an expansion of the kernel h(x,y)h(x,y) into Hermite polynomials, the other based on an empirical process representation of the U-statistic. Together, the two approaches cover a wide range of kernels, including all kernels commonly used in applications

    Power of Change-Point Tests for Long-Range Dependent Data

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    We investigate the power of the CUSUM test and the Wilcoxon change-point test for a shift in the mean of a process with long-range dependent noise. We derive analytiv formulas for the power of these tests under local alternatives. These results enable us to calculate the asymptotic relative efficiency (ARE) of the CUSUM test and the Wilcoxon change point test. We obtain the surprising result that for Gaussian data, the ARE of these two tests equals 1, in contrast to the case of i.i.d. noise when the ARE is known to be 3/Ï€3/\pi

    Power of change-point tests for long-range dependent data

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    We investigate the power of the CUSUM test and the Wilcoxon change-point tests for a shift in the mean of a process with long-range dependent noise. We derive analytic formulas for the power of these tests under local alternatives. These results enable us to calculate the asymptotic relative efficiency (ARE) of the CUSUM test and the Wilcoxon change point test. We obtain the surprising result that for Gaussian data, the ARE of these two tests equals 1, in contrast to the case of i.i.d. noise when the ARE is known to be 3/Ï€.Herold Dehling and Aeneas Rooch were supported in part by the German Research Foundation (DFG) through the Collaborative Research Center SFB 823 Statistical Modelling of Nonlinear Dynamic Processes. Murad S. Taqqu was supported in part by NSF grant DMS-1309009 at Boston University. (SFB 823 - German Research Foundation (DFG); DMS-1309009 - NSF at Boston University)Published versio
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