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1.
Prof. Dr. A. Irle 《Metrika》1987,34(1):107-115
Summary LetX 1,X 2, ... form a sequence of martingale differences and denote byZ(a, α) = sup n (S n an α)+ the largest excess forS n =X 1 + ... +X n crossing the boundaryan α. We give a sufficient condition for the finiteness ofEZ(a, α)β which is formulated in terms of bounds forE(X i + p andE(|X i |γ|X 1, ...,X i-1), whereα, β, γ, p are suitably related. This general result is then applied to the case of independent random variables.  相似文献   

2.
Let X 1, X 2, ..., X n be independent exponential random variables such that X i has failure rate λ for i = 1, ..., p and X j has failure rate λ* for j = p + 1, ..., n, where p ≥ 1 and q = np ≥ 1. Denote by D i:n (p,q) = X i:n X i-1:n the ith spacing of the order statistics X 1:n X 2:n ≤ ... ≤ X n:n , i = 1, ..., n, where X 0:n ≡ 0. The purpose of this paper is to investigate multivariate likelihood ratio orderings between spacings D i:n (p,q), generalizing univariate comparison results in Wen et al.(J Multivariate Anal 98:743–756, 2007). We also point out that such multivariate likelihood ratio orderings do not hold for order statistics instead of spacings. Supported by National Natural Science Foundation of China, the Program for New Century Excellent Talents in University (No.: NCET-04-0569), and by the Knowledge Innovation Program of the Chinese Academy of Sciences (No.: KJCX3-SYW-S02).  相似文献   

3.
Prof. Dr. W. Stute 《Metrika》1992,39(1):257-267
LetX 1, ...,X n be an i.i.d. sample from some parametric family {θ :θ (Θ} of densities. In the random censorship model one observesZ i =min (X i ,Y i ) andδ i =1{ x i Y i}, whereY i is a censoring variable being independent ofX i . In this paper we investigate the strong consistency ofθ n maximizing the modified likelihood function based on (Z i ,δ i , 1≤in. The main result constitutes an extension of Wald’s theorem for complete data to censored data. Work partially supported by the “Deutsche Forschungsgemeinschaft”.  相似文献   

4.
N. Giri  M. Behara  P. Banerjee 《Metrika》1992,39(1):75-84
Summary LetX=(X ij )=(X 1, ...,X n )’,X i =(X i1, ...,X ip )’,i=1,2, ...,n be a matrix having a multivariate elliptical distribution depending on a convex functionq with parameters, 0,σ. Let ϱ22 -2 be the squared multiple correlation coefficient between the first and the remainingp 2+p 3=p−1 components of eachX i . We have considered here the problem of testingH 02=0 against the alternativesH 11 -2 =0, ϱ 2 -2 >0 on the basis ofX andn 1 additional observationsY 1 (n 1×1) on the first component,n 2 observationsY 2(n 2×p 2) on the followingp 2 components andn 3 additional observationsY 3(n 3×p 3) on the lastp 3 components and we have derived here the locally minimax test ofH 0 againstH 1 when ϱ 2 -2 →0 for a givenq. This test, in general, depends on the choice ofq of the familyQ of elliptically symmetrical distributions and it is not optimality robust forQ.  相似文献   

5.
F. Brodeau 《Metrika》1999,49(2):85-105
This paper is devoted to the study of the least squares estimator of f for the classical, fixed design, nonlinear model X (t i)=f(t i)+ε(t i), i=1,2,…,n, where the (ε(t i))i=1,…,n are independent second order r.v.. The estimation of f is based upon a given parametric form. In Brodeau (1993) this subject has been studied in the homoscedastic case. This time we assume that the ε(t i) have non constant and unknown variances σ2(t i). Our main goal is to develop two statistical tests, one for testing that f belongs to a given class of functions possibly discontinuous in their first derivative, and another for comparing two such classes. The fundamental tool is an approximation of the elements of these classes by more regular functions, which leads to asymptotic properties of estimators based on the least squares estimator of the unknown parameters. We point out that Neubauer and Zwanzig (1995) have obtained interesting results for connected subjects by using the same technique of approximation. Received: February 1996  相似文献   

6.
Taizhong Hu  Ying Li 《Metrika》2007,65(3):325-330
For a multivariate random vector X = (X 1,...,X n ) with a log-concave density function, it is shown that the minimum min{X 1,...,X n } has an increasing failure rate, and the maximum max{X 1,...,X n } has a decreasing reversed hazard rate. As an immediate consequence, the result of Gupta and Gupta (in Metrika 53:39–49, 2001) on the multivariate normal distribution is obtained. One error in Gupta and Gupta method is also pointed out.   相似文献   

7.
LetX 1,X 2, …,X n be independent identically distributed random vectors in IR d ,d ⩾ 1, with sample mean and sample covariance matrixS n. We present a practicable and consistent test for the composite hypothesisH d: the law ofX 1 is a non-degenerate normal distribution, based on a weighted integral of the squared modulus of the difference between the empirical characteristic function of the residualsS n −1/2 (X j − ) and its pointwise limit exp (−1/2|t|2) underH d. The limiting null distribution of the test statistic is obtained, and a table with critical values for various choices ofn andd based on extensive simulations is supplied.  相似文献   

8.
A minimal characterization of the covariance matrix   总被引:1,自引:0,他引:1  
R. Grübel 《Metrika》1988,35(1):49-52
Summary LetX be ak-dimensional random vector with mean vectorμ and non-singular covariance matrix Σ. We show that among all pairs (a, Δ),a ∈ IR k , Δ ∈ IR k×k positive definite and symmetric andE(X−a)′ Δ−1(Xa)=k, (μ, Σ) is the unique pair which minimizes det Δ. This motivates certain robust estimators of location and scale. Research supported by the Nuffield Foundation.  相似文献   

9.
Herbert Vogt 《Metrika》1996,44(1):207-221
Let ζ t be the number of events which will be observed in the time interval [0;t] and define as the average number of events per time unit if this limit exists. In the case of i.i.d. waiting-times between the events,E t ] is the renewal function and it follows from well-known results of renewal theory thatA exists and is equal to 1/τ, if τ>0 is the expectation of the waiting-times. This holds true also when τ = ∞.A may be estimate by ζ t /t or where is the mean of the firstn waiting-timesX 1,X 2, ...,X n . Both estimators converage with probability 1 to 1/τ if theX i are i.i.d.; but the expectation of may be infinite for alln and also if it is finite, is in general a positively biased estimator ofA. For a stationary renewal process, ζ t /t is unbiased for eacht; if theX i are i.i.d. with densityf(x), then ζ t /t has this property only iff(x) is of the exponential type and only for this type the numbers of events in consecutive time intervals [0,t], [t, 2t], ... are i.i.d. random variables for arbitraryt > 0.  相似文献   

10.
Let (T,τ,μ) be a finite measure space, X be a Banach space, P be a metric space and let L1(μ,X) denote the space of equivalence classes of X-valued Bochner integrable functions on (T,τ,μ). We show that if φ:T×P→2X is a set-valued function such that for each fixed pεP, φ(·,p) has a measurable graph and for each fixed tεT, φ(t,·) is either upper or lower semicontinuous then the Aumann integral of φ, i.e.,∫Tφ(t,p)dμ(t)= {∫Tx(t)dμ(t):xεSφ(p)}, where Sφ(p)= {yεL1(μ,X):y(t)εφ(t,p)μ−a.e.}, is either upper or lower semicontinuous in the variable p as well. Our results generalize those of Aumann (1965, 1976) who has considered the above problem for X=Rn, and they have useful applications in general equilibrium and game theory.  相似文献   

11.
Let X 1,X 2,…,X n be a random sample from a continuous distribution with the corresponding order statistics X 1:nX 2:n≤…≤X n:n. All the distributions for which E(X k+r: n|X k:n)=a X k:n+b are identified, which solves the problem stated in Ferguson (1967). Received February 1998  相似文献   

12.
Suppose the observations (X i,Y i), i=1,…, n, are ϕ-mixing. The strong uniform convergence and convergence rate for the estimator of the regression function was studied by serveral authors, e.g. G. Collomb (1984), L. Gy?rfi et al. (1989). But the optimal convergence rates are not reached unless the Y i are bounded or the E exp (a|Y i|) are bounded for some a>0. Compared with the i.i.d. case the convergence of the Nadaraya-Watson estimator under ϕ-mixing variables needs strong moment conditions. In this paper we study the strong uniform convergence and convergence rate for the improved kernel estimator of the regression function which has been suggested by Cheng P. (1983). Compared with Theorem A in Y. P. Mack and B. Silverman (1982) or Theorem 3.3.1 in L. Gy?rfi et al. (1989), we prove the convergence for this kind of estimators under weaker moment conditions. The optimal convergence rate for the improved kernel estimator is attained under almost the same conditions of Theorem 3.3.2 in L. Gy?rfi et al. (1989). Received: September 1999  相似文献   

13.
Summary Let (X,A) be a measurable space andP ϑη |A (ϑη) ∈ Θ x H, ∥A, (θ, η) ∈ Θ×H, a parametrized family of probability measures (for short:p-measures). This paper is concerned with the problem of consistently estimatingθ from realizations governed by , where ηu ∈ H, v ∈ ℕ, are unknown.  相似文献   

14.
LetX 1,X 2, ...,X n (n≥3) be a random sample on a random variableX with distribution functionF having a unique continuous inverseF −1 over (a,b), −∞≤a<b≤∞ the support ofF. LetX 1:n <X 2:n <...<X n:n be the corresponding order statistics. Letg be a nonconstant continuous function over (a,b). Then for some functionG over (a, b) and for some positive integersr ands, 1<r+1<sn
  相似文献   

15.
W. Stadje 《Metrika》1988,35(1):93-97
LetP be a probability measure on ℝ andI x be the set of alln-dimensional rectangles containingx. If for allx ∈ ℝn and θ ∈ ℝ the inequality holds,P is a normal distributioin with mean 0 or the unit mass at 0. The result generalizes Teicher’s (1961) maximum likelihood characterization of the normal density to a characterization ofN(0, σ2) amongall distributions (including those without density). The m.l. principle used is that of Scholz (1980).  相似文献   

16.
Klaus Ziegler 《Metrika》2001,53(2):141-170
In the nonparametric regression model with random design and based on i.i.d. pairs of observations (X i, Y i), where the regression function m is given by m(x)=?(Y i|X i=x), estimation of the location θ (mode) of a unique maximum of m by the location of a maximum of the Nadaraya-Watson kernel estimator for the curve m is considered. In order to obtain asymptotic confidence intervals for θ, the suitably normalized distribution of is bootstrapped in two ways: we present a paired bootstrap (PB) where resampling is done from the empirical distribution of the pairs of observations and a smoothed paired bootstrap (SPB) where the bootstrap variables are generated from a smooth bivariate density based on the pairs of observations. While the PB requires only relatively small computational effort when carried out in practice, it is shown to work only in the case of vanishing asymptotic bias, i.e. of “undersmoothing” when compared to optimal smoothing for mode estimation. On the other hand, the SPB, although causing more intricate computations, is able to capture the correct amount of bias if the pilot estimator for m oversmoothes. Received: May 2000  相似文献   

17.
LetX 1,X 2,… be i.i.d. with finite meanμ>0,S n =X 1+…+X n . Forf(n)=n β ,c>0 we consider the stopping timesT c =inf{n:S n >c+f(n)} with overshootR c =S T c −(c+f(T c )). For 0<β<1 we give a bound for sup c≥0 ER c in the spirit of Lorden’s well-known inequality forf=0.  相似文献   

18.
Summary LetX andY be two random vectors with values in ℝ k and ℝ∝, respectively. IfZ=(X T,Y T) T is multivariate normal thenX givenY=y andY givenX=x are (multivariate) normal; the converse is wrong. In this paper simple additional conditions are stated such that the converse is true, too. Furthermore, the case is treated that the random vectorZ=(X 1 T , …,X t T ) T is splitted intot≥3 partsX 1, …,X t.  相似文献   

19.
D. A. Ioannides 《Metrika》1999,50(1):19-35
Let {(X i, Y i,)}, i≥1, be a strictly stationary process from noisy observations. We examine the effect of the noise in the response Y and the covariates X on the nonparametric estimation of the conditional mode function. To estimate this function we are using deconvoluting kernel estimators. The asymptotic behavior of these estimators depends on the smoothness of the noise distribution, which is classified as either ordinary smooth or super smooth. Uniform convergence with almost sure convergence rates is established for strongly mixing stochastic processes, when the noise distribution is ordinary smooth. Received: April 1998  相似文献   

20.
An enterprise is owned jointly by m agents, the ith agent's share being θi > 0 where ∑iθi=1. The enterprise is able to produce some non-negative n-vector x of goods where x lies in some convex production set X. An operation consists of choosing a vector from X and distributing it among the agents. The problem is to find an operations such that the value of the ith agent's bundle measured in a given price system is proportional to θi and such that the operation is (Pareto) optimal with respect to the agent's preferences. It is shown under standard assumptions that operations which are both optimal and proportional always exist. It is also shown that these operations are unique if (a) X is given by a separable production function, and (b) when X represents production of a single good over n time periods.  相似文献   

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