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1.
We find the logarithmic L2‐small ball asymptotics for a class of zero mean Gaussian fields with covariances having the structure of “tensor product”. The main condition imposed on marginal covariances is slow growth at the origin of counting functions of their eigenvalues. That is valid for Gaussian functions with smooth covariances. Another type of marginal functions considered as well are classical Wiener process, Brownian bridge, Ornstein–Uhlenbeck process, etc., in the case of special self‐similar measure of integration. Our results are based on a new theorem on spectral asymptotics for the tensor products of compact self‐adjoint operators in Hilbert space which is of independent interest. Thus, we continue to develop the approach proposed in the paper 6 , where the regular behavior at infinity of marginal eigenvalues was assumed.  相似文献   

2.
Summary We estimate small ball probabilities for locally nondeterministic Gaussian processes with stationary increments, a class of processes that includes the fractional Brownian motions. These estimates are used to prove Chung type laws of the iterated logarithm.Research supported by the United States Air Force office of Scientific Research, Contract No. 91-0030  相似文献   

3.
In this paper, we establish functional convergence theorems for second order quadratic variations of Gaussian processes which admit a singularity function. First, we prove a functional almost sure convergence theorem, and a functional central limit theorem, for the process of second order quadratic variations, and we illustrate these results with the example of the fractional Brownian sheet (FBS). Second, we do the same study for the process of localized second order quadratic variations, and we apply the results to the multifractional Brownian motion (MBM).  相似文献   

4.
The -dimensional Slepian Gaussian random field is a mean zero Gaussian process with covariance function for and . Small ball probabilities for are obtained under the -norm on , and under the sup-norm on which implies Talagrand's result for the Brownian sheet. The method of proof for the sup-norm case is purely probabilistic and analytic, and thus avoids ingenious combinatoric arguments of using decreasing mathematical induction. In particular, Riesz product techniques are new ingredients in our arguments.

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5.
crements The a.s. sample path properties for ι^p-valued Gaussian processes with stationary increments under some more general conditions are established.  相似文献   

6.
Let {BH1,H2(t1,t2),t1?0,t2?0} be a fractional Brownian sheet with indexes 0<H1,H2<1. When H1=H2:=H, there is a logarithmic factor in the small ball function of the sup-norm statistic of BH,H. First, we state general conditions (one based on a logarithmic factor in the small ball function) on some statistics of BH,H. Then we characterize the sufficiency part of the lower classes of these statistics by an integral test. Finally, when we consider the sup-norm statistic, the influence of the log-type small ball factor in the necessity part is measured by a second integral test.  相似文献   

7.
8.
For Gaussian vector fields {X(t) ∈ Rn:tRd} we describe the covariance functions of all scaling limits Y(t) = Llimα↓0 B?1(α) Xt) which can occur when B(α) is a d × d matrix function with B(α) → 0. These matrix covariance functions r(t, s) = EY(t) Y1(s) are found to be homogeneous in the sense that for some matrix L and each α > 0, (1) r(αt, αs) = αL1r(t, s) αL. Processes with stationary increments satisfying (1) are further analysed and are found to be natural generalizations of Lévy's multiparameter Brownian motion.  相似文献   

9.
10.
In this paper, we define and study a new class of random fields called harmonizable multi-operator scaling stable random fields. These fields satisfy a local asymptotic operator scaling property which generalizes both the local asymptotic self-similarity property and the operator scaling property. Actually, they locally look like operator scaling random fields, whose order is allowed to vary along the sample paths. We also give an upper bound of their modulus of continuity. Their pointwise Hölder exponents may also vary with the position x and their anisotropic behavior is driven by a matrix which may also depend on x.  相似文献   

11.
Summary A central limit theorem for Toeplitz type quadratic functionals of a stationary Gaussian processX(t),t, is proved, generalizing the result of Avram [1] for discrete time processes. The result is applied to the problem of nonparametric estimation of linear functionals of an unknown spectral density function. We give some upper bounds for the minimax mean square risk of the nonparametric estimators, similar to those by Ibragimov and Has'minskii [12] for a probability density function.  相似文献   

12.
The monotone rearrangement of a function is the non-decreasing function with the same distribution. The convex rearrangement of a smooth function is obtained by integrating the monotone rearrangement of its derivative. This operator can be applied to regularizations of a stochastic process to measure quantities of interest in econometrics.A multivariate generalization of these operators is proposed, and the almost sure convergence of rearrangements of regularized Gaussian fields is given. For the fractional Brownian field or the Brownian sheet approximated on a simplicial grid, it appears that the limit object depends on the orientation of the simplices.  相似文献   

13.
Let {Xn} be a stationary Gaussian sequence with E{X0} = 0, {X20} = 1 and E{X0Xn} = rnn Let cn = (2ln n)built12, bn = cn? 12c-1n ln(4π ln n), and set Mn = max0 ?k?nXk. A classical result for independent normal random variables is that
P[cn(Mn?bn)?x]→exp[-e-x] as n → ∞ for all x.
Berman has shown that (1) applies as well to dependent sequences provided rnlnn = o(1). Suppose now that {rn} is a convex correlation sequence satisfying rn = o(1), (rnlnn)-1 is monotone for large n and o(1). Then
P[rn-12(Mn ? (1?rn)12bn)?x] → Ф(x)
for all x, where Ф is the normal distribution function. While the normal can thus be viewed as a second natural limit distribution for {Mn}, there are others. In particular, the limit distribution is given below when rn is (sufficiently close to) γ/ln n. We further exhibit a collection of limit distributions which can arise when rn decays to zero in a nonsmooth manner. Continuous parameter Gaussian processes are also considered. A modified version of (1) has been given by Pickands for some continuous processes which possess sufficient asymptotic independence properties. Under a weaker form of asymptotic independence, we obtain a version of (2).  相似文献   

14.
15.
Summary LetX n, n d be a field of independent random variables taking values in a semi-normed measurable vector spaceF. For a broad class of fields n, d of positive numbers, the almost sure behaviour of knXk/n, n d is studied. The main result allows us to deduce some new and well-known theorems for fields of independentF random variables from related results for fields of independent real random variables.Supported in part by the Youth Science Foundation of China, No. 19001018Supported by the National Natural Science Foundation of China  相似文献   

16.
Consider events of the form {Zs≥ζ(s),s∈S}{Zsζ(s),sS}, where ZZ is a continuous Gaussian process with stationary increments, ζζ is a function that belongs to the reproducing kernel Hilbert space RR of process ZZ, and S⊂RSR is compact. The main problem considered in this paper is identifying the function β∈RβR satisfying β(s)≥ζ(s)β(s)ζ(s) on SS and having minimal RR-norm. The smoothness (mean square differentiability) of ZZ turns out to have a crucial impact on the structure of the solution. As examples, we obtain the explicit solutions when ζ(s)=sζ(s)=s for s∈[0,1]s[0,1] and ZZ is either a fractional Brownian motion or an integrated Ornstein–Uhlenbeck process.  相似文献   

17.
Let {X(t):tRd} be a multivariate operator-self-similar random field with values in Rm. Such fields were introduced in [22] and satisfy the scaling property {X(cEt):tRd}=d{cDX(t):tRd} for all c>0, where E is a d×d real matrix and D is an m×m real matrix. We solve an open problem in [22] by calculating the Hausdorff dimension of the range and graph of a trajectory over the unit cube K=[0,1]d in the Gaussian case. In particular, we enlighten the property that the Hausdorff dimension is determined by the real parts of the eigenvalues of E and D as well as the multiplicity of the eigenvalues of E and D.  相似文献   

18.
We consider linear random fields and show how an analogue of the Beveridge-Nelson decomposition can be applied to prove limit theorems for sums of such fields.  相似文献   

19.
We construct a sequence of processes that converges strongly to fractional Brownian motion uniformly on bounded intervals for any Hurst parameter HH, and we derive a rate of convergence, which becomes better when HH approaches 1/21/2. The construction is based on the Mandelbrot–van Ness stochastic integral representation of fractional Brownian motion and on a strong transport process approximation of Brownian motion. The objective of this method is to facilitate simulation.  相似文献   

20.
We consider a fluid model fed by two Gaussian processes. We obtain necessary and sufficient conditions for the workload asymptotics to be completely determined by one of the two processes, and apply these results to the case of two fractional Brownian motions.  相似文献   

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