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1.
The probability density function (pdf) of a two parameter exponential distribution is given by f(x; p, s?) =s?-1 exp {-(x - ρ)/s?} for x≥ρ and 0 elsewhere, where 0 < ρ < ∞ and 0 < s?∞. Suppose we have k independent random samples where the ith sample is drawn from the ith population having the pdf f(x; ρi, s?i), 0 < ρi < ∞, 0 < s?i < s?i < and f(x; ρ, s?) is as given above. Let Xi1 < Xi2 <… < Xiri denote the first ri order statistics in a random sample of size ni, drawn from the ith population with pdf f(x; ρi, s?i), i = 1, 2,…, k. In this paper we show that the well known tests of hypotheses about the parameters ρi, s?i, i = 1, 2,…, k based on the above observations are asymptotically optimal in the sense of Bahadur efficiency. Our results are similar to those for normal distributions.  相似文献   

2.
3.
Suppose that we are given k(≥ 2) independent and normally distributed populations π1, …, πk where πi has unknown mean μi and unknown variance σ2 i (i = 1, …, k). Let μ[i] (i = 1, …, k) denote the ith smallest one of μ1, …, μk. A two-stage procedure is used to construct lower and upper confidence intervals for μ[i] and then use these to obtain a class of two-sided confidence intervals on μ[i] with fixed width. For i = k, the interval given by Chen and Dudewicz (1976) is a special case. Comparison is made between the class of two-sided intervals and a symmetric interval proposed by Chen and Dudewicz (1976) for the largest mean, and it is found that for large values of k at least one of the former intervals requires a smaller total sample size. The tables needed to actually apply the procedure are provided.  相似文献   

4.
Let πi (i=1,2,…, k) be charceterized by the uniform distribution on (ai;bi), where exactly one of ai and bi is unknown. With unequal sample sizes, suppose that from the k (>=2) given populations, we wish to select a random-size subset containing the one with the smllest value of θi= bi - ai. RuleRi selects π if a likelihood-based k-dimensional confidence region for the unknown (θ1,… θk) contains at least one point having θi as its smallest component. A second rule, R , is derived through a likelihood ratio and turns out to be that of Barr and prabhu whenthe sample sizes are equal. Numerical comparisons are made. The results apply to the larger class of densities g ( z ; θi) =M(z)Q(θi) if a(θi) < z <b(θi). Extensions to the cases when both ai and bi are unknown and when θj isof interest are indicated. 1<=j<=k  相似文献   

5.
This paper offers a predictive approach for the selection of a fixed number (= t) of treatments from k treatments with the goal of controlling for predictive losses. For the ith treatment, independent observations X ij (j = 1,2,…,n) can be observed where X ij ’s are normally distributed N(θ i ; σ 2). The ranked values of θ i ’s and X i ’s are θ (1) ≤ … ≤ θ (k) and X [1] ≤ … ≤ X [k] and the selected subset S = {[k], [k? 1], … , [k ? t+1]} will be considered. This paper distinguishes between two types of loss functions. A type I loss function associated with a selected subset S is the loss in utility from the selector’s view point and is a function of θ i with i ? S. A type II loss function associated with S measures the unfairness in the selection from candidates’ viewpoint and is a function of θ i with i ? S. This paper shows that under mild assumptions on the loss functions S is optimal and provides the necessary formulae for choosing n so that the two types of loss can be controlled individually or simultaneously with a high probability. Predictive bounds for the losses are provided, Numerical examples support the usefulness of the predictive approach over the design of experiment approach.  相似文献   

6.
Let X1,…, Xn be mutually independent non-negative integer-valued random variables with probability mass functions fi(x) > 0 for z= 0,1,…. Let E denote the event that {X1X2≥…≥Xn}. This note shows that, conditional on the event E, Xi-Xi+ 1 and Xi+ 1 are independent for all t = 1,…, k if and only if Xi (i= 1,…, k) are geometric random variables, where 1 ≤kn-1. The k geometric distributions can have different parameters θi, i= 1,…, k.  相似文献   

7.
Let T2 i=z′iS?1zi, i==,…k be correlated Hotelling's T2 statistics under normality. where z=(z′i,…,z′k)′ and nS are independently distributed as Nkp((O,ρ?∑) and Wishart distribution Wp(∑, n), respectively. The purpose of this paper is to study the distribution function F(x1,…,xk) of (T2 i,…,T2 k) when n is large. First we derive an asymptotic expansion of the characteristic function of (T2 i,…,T2 k) up to the order n?2. Next we give asymptotic expansions for (T2 i,…,T2 k) in two cases (i)ρ=Ik and (ii) k=2 by inverting the expanded characteristic function up to the orders n?2 and n?1, respectively. Our results can be applied to the distribution function of max (T2 i,…,T2 k) as a special case.  相似文献   

8.
In an earlier paper the authors (1997) extended the results of Hayter (1990) to the two parameter exponential probability model. This paper addressee the extention to the scale parameter case under location-scale probability model. Consider k (k≧3) treatments or competing firms such that an observation from with treatment or firm follows a distribution with cumulative distribution function (cdf) Fi(x)=F[(x-μi)/Qi], where F(·) is any absolutely continuous cdf, i=1,…,k. We propose a test to test the null hypothesis H01=…=θk against the simple ordered alternative H11≦…≦θk, with at least one strict inequality, using the data Xi,j, i=1,…k; j=1,…,n1. Two methods to compute the critical points of the proposed test have been demonstrated by talking k two parameter exponential distributions. The test procedure also allows us to construct simultaneous one sided confidence intervals (SOCIs) for the ordered pairwise ratios θji, 1≦i<j≦k. Statistical simulation revealed that: 9i) actual sizes of the critical points are almost conservative and (ii) power of the proposed test relative to some existing tests is higher.  相似文献   

9.
Let Xi:j denote the ith order statistic of a random sample of size j from a continuous life distribution. We show that if Xk:n, is IFR, IFRA, NBU, or DMRL, so are Xk+1:n, Xk+1:n?1 and Xk+1:n+1. Further we show that, in the first three cases, Xk+1:n+2 also shares the corresponding property if k ≤ (n+3)/2. We also present dual results for DFR, DFRA and NWU classes.  相似文献   

10.
Let X= (X1,…, Xk)’ be a k-variate (k ≥ 2) normal random vector with unknown population mean vector μ = (μ1 ,…, μk)’ and covariance matrix Σ of order k and let μ[1] ≤ … ≤ μ[k] be the ordered values of the μ ’ s. No prior knowledge of the pairing of the μ[i] with the Xj. (or μ[i] with the σj 2) is assumed for any i and j (1 ≤ i, j ≤ k). Based on a random sample of N independent vector observations on X, this paper considers both upper and lower (one-sided) and two-sided 100γ% (0 < γ < 1) confidence intervals for μ[k] and μ[1], the largest and the smallest mean, respectively, when Σ is known and when Σ is equal to σ2R with common unknown variance σ2 > 0 and correlation matrix R known, respectively. An optimum two-sided confidence interval via finding the shortest length from this class is also considered. Necessary tables and computer program to actually apply these procedures are provided.  相似文献   

11.
In this paper, we obtain some results for the asymptotic behavior of the tail probability of a random sum Sτ = ∑τk = 1Xk, where the summands Xk, k = 1, 2, …, are conditionally dependent random variables with a common subexponential distribution F, and the random number τ is a non negative integer-valued random variable, independent of {Xk: k ? 1}.  相似文献   

12.
Let Π1,…,Πk be k populations with Πi being Pareto with unknown scale parameter αi and known shape parameter βi;i=1,…,k. Suppose independent random samples (Xi1,…,Xin), i=1,…,k of equal size are drawn from each of k populations and let Xi denote the smallest observation of the ith sample. The population corresponding to the largest Xi is selected. We consider the problem of estimating the scale parameter of the selected population and obtain the uniformly minimum variance unbiased estimator (UMVUE) when the shape parameters are assumed to be equal. An admissible class of linear estimators is derived. Further, a general inadmissibility result for the scale equivariant estimators is proved.  相似文献   

13.
Consider the linear regression model, yi = xiβ0 + ei, i = l,…,n, and an M-estimate β of βo obtained by minimizing Σρ(yi — xiβ), where ρ is a convex function. Let Sn = ΣXiXiXi and rn = Sn½ (β — β0) — Sn 2 Σxih(ei), where, with a suitable choice of h(.), the expression Σ xix(e,) provides a linear representation of β. Bahadur (1966) obtained the order of rn as n→ ∞ when βo is a one-dimensional location parameter representing the median, and Babu (1989) proved a similar result for the general regression parameter estimated by the LAD (least absolute deviations) method. We obtain the stochastic order of rn as n → ∞ for a general M-estimate as defined above, which agrees with the results of Bahadur and Babu in the special cases considered by them.  相似文献   

14.
The inverse autocorrelation function of a weakly stationary stochastic process Xt at lag h, γi h, is shown to equal the negative of the partial correlation between random variables Xt and Xt+h after elimination of the influence of random variables Xk, k≠t5,t+h.  相似文献   

15.
Suppose that Xi are independent random variables, and that Xi has cdf Fi (x), 1 ≤ ik. Many statistical problems involve the probability Pr{X 1 < X 2 < ··· < Xk }. In this note a numerical method is proposed for computing this probability.  相似文献   

16.
Let X1 be a strictly stationary multiple time series with values in Rd and with a common density f. Let X1,.,.,Xn, be n consecutive observations of X1. Let k = kn, be a sequence of positive integers, and let Hni be the distance from Xi to its kth nearest neighbour among Xj, j i. The multivariate variable-kernel estimate fn, of f is defined by where K is a given density. The complete convergence of fn, to f on compact sets is established for time series satisfying a dependence condition (referred to as the strong mixing condition in the locally transitive sense) weaker than the strong mixing condition. Appropriate choices of k are explicitly given. The results apply to autoregressive processes and bilinear time-series models.  相似文献   

17.
Let X = {X1, X2, …} be a sequence of independent but not necessarily identically distributed random variables, and let η be a counting random variable independent of X. Consider randomly stopped sum Sη = ∑ηk = 1Xk and random maximum S(η) ? max?{S0, …, Sη}. Assuming that each Xk belongs to the class of consistently varying distributions, on the basis of the well-known precise large deviation principles, we prove that the distributions of Sη and S(η) belong to the same class under some mild conditions. Our approach is new and the obtained results are further studies of Kizinevi?, Sprindys, and ?iaulys (2016) and Andrulyt?, Manstavi?ius, and ?iaulys (2017).  相似文献   

18.
Consider k independent random samples with different sample sizes such that the ith sample comes from the cumulative distribution function (cdf) F i  = 1 ? (1 ? F)α i , where α i is a known positive constant and F is an absolutely continuous cdf. Also, suppose that we have observed the maximum and minimum of the first k samples. This article shows how one can construct the nonparametric prediction intervals for the order statistics of the future samples on the basis of these information. Three schemes are studied and in each case exact expressions for the prediction coefficients of prediction intervals are derived. Numerical computations are given for illustrating the results. Also, a comparison study is done while the complete samples are available.  相似文献   

19.
Consider the randomly weighted sums Sm(θ) = ∑mi = 1θiXi, 1 ? m ? n, and their maxima Mn(θ) = max?1 ? m ? nSm(θ), where Xi, 1 ? i ? n, are real-valued and dependent according to a wide type of dependence structure, and θi, 1 ? i ? n, are non negative and arbitrarily dependent, but independent of Xi, 1 ? i ? n. Under some mild conditions on the right tails of the weights θi, 1 ? i ? n, we establish some asymptotic equivalence formulas for the tail probabilities of Sn(θ) and Mn(θ) in the case where Xi, 1 ? i ? n, are dominatedly varying, long-tailed and subexponential distributions, respectively.  相似文献   

20.
Let Sn = X1 + … + Xn, where X1,…, Xn are independent Bernoulli random variables. In this paper, we evaluate probability metrics of the Wasserstein type between the distribution of Sn and a Poisson distribution. Our results show that, if E(Sn) = O(1) and if the individual probabilities of success of the Xi's tend uniformly to zero, then the general rate of convergence of the above mentioned metrics to zero is O(∑ni = 1P2i). We also show that this rate is sharp and discuss applications of these results.  相似文献   

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