首页 | 本学科首页   官方微博 | 高级检索  
相似文献
 共查询到20条相似文献,搜索用时 234 毫秒
1.
Let (X, Y) be a bivariate random vector with joint distribution function FX, Y(x, y) = C(F(x), G(y)), where C is a copula and F and G are marginal distributions of X and Y, respectively. Suppose that (Xi, Yi), i = 1, 2, …, n is a random sample from (X, Y) but we are able to observe only the data consisting of those pairs (Xi, Yi) for which Xi ? Yi. We denote such pairs as (X*i, Yi*), i = 1, 2, …, ν, where ν is a random variable. The main problem of interest is to express the distribution function FX, Y(x, y) and marginal distributions F and G with the distribution function of observed random variables X* and Y*. It is shown that if X and Y are exchangeable with marginal distribution function F, then F can be uniquely determined by the distributions of X* and Y*. It is also shown that if X and Y are independent and absolutely continuous, then F and G can be expressed through the distribution functions of X* and Y* and the stress–strength reliability P{X ? Y}. This allows also to estimate P{X ? Y} with the truncated observations (X*i, Yi*). The copula of bivariate random vector (X*, Y*) is also derived.  相似文献   

2.
A sequence {Xn, n≥1} of independent and identically distributed random variables with absolutely continuous (with respect to Lebesque measure) cumulative distribution function F(x) is considered. Xj is a record value of this sequence if Xj>max(X1,…,Xj?1), j>1. Let {XL(n), n≥0} with L(o)=1 be the sequence of such record values and Zn,n?1=XL(n)–XL(n?1). Some properties of Zn,n?1 are studied and characterizations of the exponential distribution are discussed in terms of the expectation and the hazard rate of zn,n?1.  相似文献   

3.
Consider a linear function of order statistics (“L-estimate”) which can be expressed as a statistical function T(Fn) based on the sample cumulative distribution function Fn. Let T*(Fn) be the corresponding jackknifed version of T(Fn), and let V2n be the jackknife estimate of the asymptotic variance of n 1/2T(Fn) or n 1/2T*(Fn). In this paper, we provide a Berry-Esséen rate of the normal approximation for a Studentized jackknife L-estimate n1/2[T*(Fn) - T(F)]/Vn, where T(F) is the basic functional associated with the L-estimate.  相似文献   

4.
According to Pitman's Measure of Closeness, if T1and T2are two estimators of a real parameter $[d], then T1is better than T2if Po[d]{\T1-o[d] < \T2-0[d]\} > 1/2 for all 0[d]. It may however happen that while T1is better than T2and T2is better than T3, T3is better than T1. Given q ? (0,1) and a sample X1, X2, ..., Xnfrom an unknown F ? F, an estimator T* = T*(X1,X2...Xn)of the q-th quantile of the distribution F is constructed such that PF{\F(T*)-q\ <[d] \F(T)-q\} >[d] 1/2 for all F?F and for all T€T, where F is a nonparametric family of distributions and T is a class of estimators. It is shown that T* =Xj:n'for a suitably chosen jth order statistic.  相似文献   

5.
Let X1,…,X7 be i.i.d. random variables with a common continuous distribution F, Two parameters, μ(F) = P(X1 < X5 and X1+X4 < X2+X3) and λ(F) = P(X1+X4 < X2+X3 and X1+X7 < X5+X6), which appear in the moments of some rank statistics have been studied by several authors. It is shown that the existing lower bound, 3/10 ≤ μ(F) can be improved to 3/10 < μ(F) and that no further improvement is possible. It is also shown that the existing upper bounds μ(F) ≤ (21/2+6)/24 ≈ 0.30893 and λ(F) ≤ 7/24 ≈ 0.29167 can be improved to [14+(2/3)1/2]/48 ≈ 0.30868 and {7 ? [1 ? (2/3)1/2]2/4}/24 ≈ 0.29132.  相似文献   

6.
Let X ∈ R be a random vector with a distribution which is invariant under rotations within the subspaces Vj (dim Vj. = qj) whose direct sum is R. The large sample distributions of the eigenvalues and vectors of Mn= n-1Σnl xixi are studied. In particular it is shown that several eigenvalue results of Anderson & Stephens (1972) for uniformly distributed unit vectors hold more generally.  相似文献   

7.
We study the distributions of the random variables Sn and Vr related to a sequence of dependent Bernoulli variables, where Sn denotes the number of successes in n trials and Vr the number of trials necessary to obtain r successes. The purpose of this article is twofold: (1) Generalizing some results on the “nature” of the binomial and negative binomial distributions we show that Sn and Vr can follow any prescribed discrete distribution. The corresponding joint distributions of the Bernoulli variables are characterized as the solutions of systems of linear equations. (2) We consider a specific type of dependence of the Bernoulli variables, where the probability of a success depends only on the number of previous successes. We develop some theory based on new closed-form representations for the probability mass functions of Sn and Vr which enable direct computations of the probabilities.  相似文献   

8.
Let X be a non-negative random variable with cumulative probability distribution function F. Suppse X1, X2, ..., Xn be a random sample of size n from F and Xi,n is the i-th smallest order statistics. We define the standardized spacings Dr,n=(n-r) (Xr+1,n-Xr,n), 1≤r≤n, with DO,n=nX1,n and Dn,n=0. Characterizations of the exponential distribution are given by considering the expectation and hazard rates of Dr,n.  相似文献   

9.
Let Xl,…,Xn (Yl,…,Ym) be a random sample from an absolutely continuous distribution with distribution function F(G).A class of distribution-free tests based on U-statistics is proposed for testing the equality of F and G against the alternative that X's are more dispersed then Y's. Let 2 ? C ? n and 2 ? d ? m be two fixed integers. Let ?c,d(Xil,…,Xic ; Yjl,…,Xjd)=1(-1)when max as well as min of {Xil,…,Xic ; Yjl,…,Yjd } are some Xi's (Yj's)and zero oterwise. Let Sc,d be the U-statistic corresponding to ?c,d.In case of equal sample sizes, S22 is equivalent to Mood's Statistic.Large values of Sc,d are significant and these tests are quite efficient  相似文献   

10.
The problem of estimating the parameter Q appearing in the distribution function of a continuous random variable T=min{T1,T2} is considered, when T1,T2 are non-negative independent random variables such that T1 has an exponential distribution with scale parameter θ and T2 has a possibly defective distribution function G2(t) that is G2(∞) < 1. It is shown that the estimator proposed by Gertsbach [(1967) Theory of Probability and Its Applications, 12 is weekly consistent and asymptotically normal. The merit of this estimator is that the above properties do not depend even on the form of G2(t) except that G2(t) and its derivative vanish at zero.  相似文献   

11.
Let D be a saturated fractional factorial design of the general K1 x K2 ...x Kt factorial such that it consists of m distinct treatment combinations and it is capable of providing an unbiased estimator of a subvector of m factorial parameters under the assumption that the remaining k-m,t (k = H it ) factorial parameters are negligible. Such a design will not provide an unbiased estimator of the varianceσ2 Suppose that D is an optimal design with respect to some optimality criterion (e.g. d-optimality, a-optimality or e-optimality) and it is desirable to augment D with c treatmentcombinations with the aim to estimate 2 Suppose that D is an optimal design with respect to some optimality criterion (e.g. d-optimality, a-optimality or e-optimality) and it is desirable to augment D with c treatment combinations with the aim to estimate σ2 unbiasedly. The problem then is how to select the c treatment combinations such that the augmented design D retains its optimality property. This problem, in all its generality is extremely complex. The objective of this paper is to provide some insight in the problem by providing a partial answer in the case of the 2tfactorial, using the d-optimality criterion.  相似文献   

12.
Let U and V be two symmetric (about zero) random variables with U + V symmetric about C; here C is a constant. It is easy to see that if U and V are mutually independent, or if both U and V satisfy the weak law of large numbers, then C = 0. So, intuitively, we would suspect that C = 0 in general. However, we show that there exist two random variables U and V symmetric about 0 with U + V symmetric about C ≠ 0 The example given is closely related to one given by Alejandro D. De Acosta in another context.  相似文献   

13.
Fix r ≥ 1, and let {Mnr} be the rth largest of {X1,X2,…Xn}, where X1,X2,… is a sequence of i.i.d. random variables with distribution function F. It is proved that P[Mnr ≤ un i.o.] = 0 or 1 according as the series Σn=3Fn(un)(log log n)r/n converges or diverges, for any real sequence {un} such that n{1 -F(un)} is nondecreasing and divergent. This generalizes a result of Bamdorff-Nielsen (1961) in the case r = 1.  相似文献   

14.
Let X1,… Xm be a random sample of m failure times under normal conditions with the underlying distribution F(x) and Y1,…,Yn a random sample of n failure times under accelerated condititons with underlying distribution G(x);G(x)=1?[1?F(x)]θ with θ being the unknown parameter under study.Define:Uij=1 otherwise.The joint distribution of ijdoes not involve the distribution F and thus can be used to estimate the acceleration parameter θ.The second approach for estimating θ is to use the ranks of the Y-observations in the combined X- and Y-samples.In this paper we establish that the rank of the Y-observations in the pooled sample form a sufficient statistic for the information contained in the Uii 's about the parameter θ and that there does not exist an unbiassed estimator for the parameter θ.We also construct several estimators and confidence interavals for the parameter θ.  相似文献   

15.
Multivariate combination-based permutation tests have been widely used in many complex problems. In this paper we focus on the equipower property, derived directly from the finite-sample consistency property, and we analyze the impact of the dependency structure on the combined tests. At first, we consider the finite-sample consistency property which assumes that sample sizes are fixed (and possibly small) and considers on each subject a large number of informative variables. Moreover, since permutation test statistics do not require to be standardized, we need not assume that data are homoscedastic in the alternative. The equipower property is then derived from these two notions: consider the unconditional permutation power of a test statistic T for fixed sample sizes, with V ? 2 independent and identically distributed variables and fixed effect δ, calculated in two ways: (i) by considering two V-dimensional samples sized m1 and m2, respectively; (ii) by considering two unidimensional samples sized n1 = Vm1 and n2 = Vm2, respectively. Since the unconditional power essentially depends on the non centrality induced by T, and two ways are provided with exactly the same likelihood and the same non centrality, we show that they are provided with the same power function, at least approximately. As regards both investigating the equipower property and the power behavior in presence of correlation we performed an extensive simulation study.  相似文献   

16.
Let ?(1) and ?(2) be location-equivariant estimators of an unknown location parameter μ. It is shown that the test for H0: μ ≤ μ0 versus HA : μ > μ0 that rejects H0 if ?(1) is large is uniformly more powerful than the one that rejects H0 if ?(2) is large if and only if ?(2) is “more dispersed” than ?(1). A similar result is obtained for tests on scale using the star-shaped ordering. Examples are given.  相似文献   

17.
A positive random variable X with law L(X) and finite moment of order r > 0 has an induced length-biased law of order r, denoted by L(Xr). Let V ⩾ 0 be independent of Xr. A characterization problem seeks solution pairs (L(X), L(V)) for the “in-law” equation XVXr, where ≅ denotes equality in law. A renewal process interpretation asks when is the random rescaling of the stationary total lifetime VX1 equal in law to a typical lifetime X? Solutions are known in special cases.A comprehensive existence/uniqueness theory is presented, and many consequences are explored. Unique solutions occur when − log X and − log V have spectrally positive infinitely divisible laws. Particular cases are explored.Connections with the stationary lifetime law of renewal theory also are investigated.  相似文献   

18.
Often, many complicated statistics used as estimators or test statistics take the form of the (multivariate) empirical distribution function evaluated at a random vector (Vn). Denote such statistics by Sn. This paper describes methods for the study of various asymptotic properties of Sn. First, under minimal assumptions, a weak asymptotic representation for Sn is derived. This result may be used to show the asymptotic normality of Sn. Second, under slightly more stringent regularity conditions, an almost sure representation of Sn, with suitable order (as.) of the remainder term is studied and then a law of the iterated logarithm for Sn, is derived. In this context, strong convergence results from a sequential point of view are also studied. Finally, weak convergence to a Brownian motion process is established. As an application, we show the limiting normality of Sn, for a random number of summands.  相似文献   

19.
Let X1, X2, …, Xn be identically, independently distributed N(i,1) random variables, where i = 0, ±1, ±2, … Hammersley (1950) showed that d = [X?n], the nearest integer to the sample mean, is the maximum likelihood estimator of i. Khan (1973) showed that d is minimax and admissible with respect to zero-one loss. This note now proves a conjecture of Stein to the effect that in the class of integer-valued estimators d is minimax and admissible under squared-error loss.  相似文献   

20.
Let (X 1, X 2) be a bivariate L p -norm generalized symmetrized Dirichlet (LpGSD) random vector with parameters α12. If p12=2, then (X 1, X 2) is a spherical random vector. The estimation of the conditional distribution of Z u *:=X 2 | X 1>u for u large is of some interest in statistical applications. When (X 1, X 2) is a spherical random vector with associated random radius in the Gumbel max-domain of attraction, the distribution of Z u * can be approximated by a Gaussian distribution. Surprisingly, the same Gaussian approximation holds also for Z u :=X 2| X 1=u. In this paper, we are interested in conditional limit results in terms of convergence of the density functions considering a d-dimensional LpGSD random vector. Stating our results for the bivariate setup, we show that the density function of Z u * and Z u can be approximated by the density function of a Kotz type I LpGSD distribution, provided that the associated random radius has distribution function in the Gumbel max-domain of attraction. Further, we present two applications concerning the asymptotic behaviour of concomitants of order statistics of bivariate Dirichlet samples and the estimation of the conditional quantile function.  相似文献   

设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号