CHARACTERIZATIONS OF UNIFORM AND EXPONENTIAL DISTRIBUTIONS VIA MOMENTS OF THE kth RECORD VALUES RANDOMLY INDEXED

Similar documents
CHARACTERIZATIONS OF POWER DISTRIBUTIONS VIA MOMENTS OF ORDER STATISTICS AND RECORD VALUES

A NOTE ON THE COMPLETE MOMENT CONVERGENCE FOR ARRAYS OF B-VALUED RANDOM VARIABLES

MOMENT CONVERGENCE RATES OF LIL FOR NEGATIVELY ASSOCIATED SEQUENCES

On the Convergence of the Summation Formulas Constructed by Using a Symbolic Operator Approach

Limiting behaviour of moving average processes under ρ-mixing assumption

On Characteristic Properties of the Uniform Distribution

ANDRI ADLER. Department of Iathelnatics. Chicago, IL U.S.A. ANDREY VOLODIN. Kazan University. Kazan Tatarstan. Russia

Jordan Journal of Mathematics and Statistics (JJMS) 7(4), 2014, pp

On the Kolmogorov exponential inequality for negatively dependent random variables

RANDOM WALKS WITH WmOM INDICES AND NEGATIVE DRIm COmmONED TO STAY ~QTIVE

This condition was introduced by Chandra [1]. Ordonez Cabrera [5] extended the notion of Cesàro uniform integrability

1 Exercises for lecture 1

ln(9 4x 5 = ln(75) (4x 5) ln(9) = ln(75) 4x 5 = ln(75) ln(9) ln(75) ln(9) = 1. You don t have to simplify the exact e x + 4e x

Monotonicity and Aging Properties of Random Sums

Yunhi Cho and Young-One Kim

t x 1 e t dt, and simplify the answer when possible (for example, when r is a positive even number). In particular, confirm that EX 4 = 3.

Complete moment convergence of weighted sums for processes under asymptotically almost negatively associated assumptions

DISPERSIVE FUNCTIONS AND STOCHASTIC ORDERS

CHARACTERIZATIONS OF THE PARETO DISTRIBUTION BY THE INDEPENDENCE OF RECORD VALUES. Se-Kyung Chang* 1. Introduction

A Remark on Complete Convergence for Arrays of Rowwise Negatively Associated Random Variables

Characterizations of Weibull Geometric Distribution

COMPLETE QTH MOMENT CONVERGENCE OF WEIGHTED SUMS FOR ARRAYS OF ROW-WISE EXTENDED NEGATIVELY DEPENDENT RANDOM VARIABLES

STRONG CONVERGENCE THEOREMS BY A HYBRID STEEPEST DESCENT METHOD FOR COUNTABLE NONEXPANSIVE MAPPINGS IN HILBERT SPACES

Exact Asymptotics in Complete Moment Convergence for Record Times and the Associated Counting Process

PRZEMYSLAW M ATULA (LUBLIN]

On probabilities of large and moderate deviations for L-statistics: a survey of some recent developments

Stochastic Integral with respect to Cylindrical Wiener Process

Asymptotic Nonequivalence of Nonparametric Experiments When the Smoothness Index is ½

Qualifying Exam CS 661: System Simulation Summer 2013 Prof. Marvin K. Nakayama

Test Problems for Probability Theory ,

A note on the growth rate in the Fazekas Klesov general law of large numbers and on the weak law of large numbers for tail series

ON THE COMPLETE CONVERGENCE FOR WEIGHTED SUMS OF DEPENDENT RANDOM VARIABLES UNDER CONDITION OF WEIGHTED INTEGRABILITY

THE STRONG LAW OF LARGE NUMBERS

An Almost Sure Conditional Convergence Result and an Application to a Generalized Pólya Urn

SINGULAR POINTS OF ISOPTICS OF OPEN ROSETTES

ON THE MEDIANS OF GAMMA DISTRIBUTIONS AND AN EQUATION OF RAMANUJAN

Self-normalized laws of the iterated logarithm

5 Introduction to the Theory of Order Statistics and Rank Statistics

The aim of this paper is to obtain a theorem on the existence and uniqueness of increasing and convex solutions ϕ of the Schröder equation

Additive functionals of infinite-variance moving averages. Wei Biao Wu The University of Chicago TECHNICAL REPORT NO. 535

arxiv: v1 [math.pr] 7 Aug 2009

Chapter 6. Convergence. Probability Theory. Four different convergence concepts. Four different convergence concepts. Convergence in probability

Lectures 6: Degree Distributions and Concentration Inequalities

Some properties of the moment estimator of shape parameter for the gamma distribution

A NOTE ON RATIONAL OPERATOR MONOTONE FUNCTIONS. Masaru Nagisa. Received May 19, 2014 ; revised April 10, (Ax, x) 0 for all x C n.

k-protected VERTICES IN BINARY SEARCH TREES

A Note about the Pochhammer Symbol

with nonnegative, bounded, continuous initial values and positive numbers

7.4* General logarithmic and exponential functions

^-,({«}))=ic^if<iic/n^ir=iic/, where e(n) is the sequence defined by e(n\m) = 8^, (the Kronecker delta).

Shannon entropy in generalized order statistics from Pareto-type distributions

Spatial autoregression model:strong consistency

Uniform convergence of N-dimensional Walsh Fourier series

Formulas for probability theory and linear models SF2941

FIBONACCI NUMBERS AND SEMISIMPLE CONTINUED FRACTION. and Ln

Soo Hak Sung and Andrei I. Volodin

The Distributions of Stopping Times For Ordinary And Compound Poisson Processes With Non-Linear Boundaries: Applications to Sequential Estimation.

MAXIMUM VARIANCE OF ORDER STATISTICS

Kaczmarz algorithm in Hilbert space

Applications of on-line prediction. in telecommunication problems

Logarithmic and Exponential Equations and Change-of-Base

Question: My computer only knows how to generate a uniform random variable. How do I generate others? f X (x)dx. f X (s)ds.

Characterizations of Pareto, Weibull and Power Function Distributions Based On Generalized Order Statistics

Proof by Induction. Andreas Klappenecker

The Convergence Rate for the Normal Approximation of Extreme Sums

Math 180A. Lecture 16 Friday May 7 th. Expectation. Recall the three main probability density functions so far (1) Uniform (2) Exponential.

Commentationes Mathematicae Universitatis Carolinae

1.1 Review of Probability Theory

Marshall-Olkin Bivariate Exponential Distribution: Generalisations and Applications

ON COMPOUND POISSON POPULATION MODELS

Distributions of Functions of Random Variables. 5.1 Functions of One Random Variable

1. Aufgabenblatt zur Vorlesung Probability Theory

Ancestor Problem for Branching Trees

fffl R2(z,a)dxdy and R(z, f) is the conformal radius of f at a point z. Rigidity in the Complex Plane Isoperimetric Inequality fortorsional

Algebraic Geometry and Model Selection

AN EXTENSION OF THE HONG-PARK VERSION OF THE CHOW-ROBBINS THEOREM ON SUMS OF NONINTEGRABLE RANDOM VARIABLES

KRUSKAL-WALLIS ONE-WAY ANALYSIS OF VARIANCE BASED ON LINEAR PLACEMENTS

Complete q-moment Convergence of Moving Average Processes under ϕ-mixing Assumption

Assignment 4: Solutions

The Degree of the Splitting Field of a Random Polynomial over a Finite Field

Thinning of Renewal Process. By Nan-Cheng Su. Department of Applied Mathematics National Sun Yat-sen University Kaohsiung, Taiwan, 804, R.O.C.

ON A GENERALIZATION OF THE GUMBEL DISTRIBUTION

Massachusetts Institute of Technology

Basic concepts of probability theory

Young Whan Lee. 1. Introduction

On absolutely almost convergence

Mean convergence theorems and weak laws of large numbers for weighted sums of random variables under a condition of weighted integrability

W. Lenski and B. Szal ON POINTWISE APPROXIMATION OF FUNCTIONS BY SOME MATRIX MEANS OF CONJUGATE FOURIER SERIES

Asymptotic normality of conditional distribution estimation in the single index model

ORDER STATISTICS, QUANTILES, AND SAMPLE QUANTILES

Permutations with Inversions

On the minimum of several random variables

A PROOF OF LIGGETT'S VERSION OF THE SUBADDITIVE ERGODIC THEOREM

Optimal global rates of convergence for interpolation problems with random design

Section 6.1: Composite Functions

COMPLEMENTARY RESULTS TO HEUVERS S CHARACTERIZATION OF LOGARITHMIC FUNCTIONS. Martin Himmel. 1. Introduction

THEOREM 2. Let (X,, EX, = 0, EX: = a:, ON THE RATE OF CONVERGENCE IN A RANDOM CENTRAL LIMIT THEOREM. (1.3) YN, = SNJsN, * p, n co.

COMPOSITION SEMIGROUPS AND RANDOM STABILITY. By John Bunge Cornell University

A BIVARIATE MARSHALL AND OLKIN EXPONENTIAL MINIFICATION PROCESS

THE STRONG LAW OF LARGE NUMBERS FOR LINEAR RANDOM FIELDS GENERATED BY NEGATIVELY ASSOCIATED RANDOM VARIABLES ON Z d

Transcription:

APPLICATIONES MATHEMATICAE 24,3(1997), pp. 37 314 Z. GRUDZIEŃ and D. SZYNAL(Lublin) CHARACTERIZATIONS OF UNIFORM AND EXPONENTIAL DISTRIBUTIONS VIA MOMENTS OF THE kth RECORD VALUES RANDOMLY INDEXED Abstract. We characterize uniform and exponential distributions via moments of the kth record statistics. Too and Lin s (1989) results are contained in our approach. 1. Introduction and preliminaries. Too and Lin (1989) characterized uniform distributions in terms of moments of order statistics and exponential distributions via moments of record values. From those results it follows that the uniform distribution can be characterized by an equality involving only two moments of order statistics, and similarly the exponential distribution can be characterized by an equality involving only two moments of record values. We characterize both those distributions (uniform and exponential) by moments of the kth record values. As particular cases we get the characterization equalities quoted above. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F. The jth order statistic of a sample (X 1,...,X n ) is denoted by X j:n. For a fixed integer k 1 we define (cf. [1]) the sequence {Y n (k),n 1} of kth record values as follows: Y (k) n = X Lk (n):l k (n)+k 1, n = 1,2,..., where the sequence {L k (n),n 1} of kth record times is given by L k (1) = 1, L k (n + 1) = min{j : j > L k (n), X j:j+k 1 > X Lk (n):l k (n)+k 1}, n = 1,2,... 1991 Mathematics Subject Classification: 62E1, 6E99. Key words and phrases: sample, order statistics, record values, uniform, exponential, Weibull distributions. [37]

38 Z. Grudzień and D. Szynal We see that for k = 1 the sequence {Y n (1),n 1} is the commonly used sequence {X L(n),n 1} of record values of the sequence {X n,n 1}. Moreover, we note that Y (n) 1 = min(x 1,...,X n ) = X 1:n is the minimal statistic of the sample (X 1,...,X n ). 2. A characterization of the uniform distribution. This section contains characterizations of the uniform distribution via moments of the kth record values with both fixed and random indices. We start with the following result. Theorem 1. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F, and assume E min(x 1,...,X k ) 2p < for a fixed integer k 1 and some p > 1. Suppose that N is a positive integer-valued random variable independent of {X n,n 1} such that (2.1) E[Γ 1/q ((N 1)q + 1)/(N 1)!] <, where q = p/(p 1). Then F(x) = x 1/m, x (,1), for a positive integer m, iff m ( ) ( ) N (2.2) E(Y (k) m k N )2 2 ( 1) l E Y (k+l) N ( ) ( ) N 2m k + ( 1) l E =. Let F 1 (t) = inf{x : F(x) t}, t (,1). It is known (cf. [2]) that (2.3) E(Y (k) n )l = kn (F 1 (t)) l (1 t) k 1 [ log(1 t)] n 1 dt. First consider non-random N (as in Theorem 2 below). Observe that the left hand side of (2.2) in that case equals since m a(n) := kn ( ) ( ) n m k ( 1) l E Y n (k+l) (F 1 (t) t m ) 2 ( log(1 t)) n 1 (1 t) k 1 dt = kn F 1 (t)t m ( log(1 t)) n 1 (1 t) k 1 dt

and ( 2m l Characterizations of uniform and exponential distributions 39 ) ( ) n k ( 1) l = kn k + l t 2m ( log(1 t)) n 1 (1 t) k 1 dt. Hence, by independence of N and X s, (2.2) is equivalent to a(n)p[n = n] =, n=1 which is equivalent to F(x) = x 1/m, x (,1). For the case m = 1, Theorem 1 gives the following characterization of the uniform distribution. We have F(x) = x, x (, 1), iff [ ) N ] E(Y (k) N )2 2 Y (k+1) EY (k) N E ( k k + 1 +1 2E N ( ) N ( ) N k k + E =. k + 1 k + 2 In the case k = 1 we get from Theorem 1 the following characterizing conditions of the uniform distribution by moments of record values. Theorem 1. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that E X 1 2p < for some p > 1. Suppose that N is a positive integer-valued random variable independent of {X n,n 1} such that (2.1) is satisfied. Then F(x) = x 1/m, x (,1), for some positive integer m 1, iff EX 2 L(N) 2 m ( m l ) ( 1) l E ( 1 1 + l We note that F(x) = x, x (,1), iff + ) N X L(N):L(N)+l ( 2m l ) ( ) N 1 ( 1) l E =. 1 + l EX 2 L(N) 2EX L(N) + E2 N+1 X L(N):L(N)+1 E2 N+1 + E3 N + 1 =. Characterization conditions of the uniform distribution via moments of the kth record values Y n (k), i.e. when P[N = n] = 1, are given in the following statements. Theorem 2. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that E min(x 1,...,X k ) 2p < for a fixed integer k 1 and some p > 1. Then F(x) = x 1/m, x (,1), for

31 Z. Grudzień and D. Szynal a positive integer m, iff m ( ) ( ) n m k (2.4) E(Y n (k) ) 2 2 ( 1) l EY n (k+l) ( ) ( ) n 2m k + ( 1) l =. In the case n = 1 the condition ( ) 1 ( ) 1 k + m k + 2m EX1:k 2 2 EX 1+m:k+m + = m k characterizes F(x) = x 1/m, x (,1), when EX1:k 2 < (cf. [6]). Hence we get the statement (cf. [4], [6]) that the uniform distribution on (,1) can be characterized by the set {EX1 2,EX 2:2}, more precisely, by the equality EX 2:2 EX1 2 = 1/3. Note that F(x) = x, x (,1), iff ( ( ) n ) k E(Y n (k) )2 2 EY n (k) EY n (k+1) k + 1 For n = 1, ( k 2 k + 1 ) n ( ) n k + + 1 =. k + 2 EX1:k 2 2 k + 1 EX 2 2:k+1 + (k + 1)(k + 2) = iff F(x) = x, x (,1) (cf. [6]). Characterization conditions of the uniform distribution via moments of X L(n) are as follows. Theorem 2. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that E X 1 2p < for some p > 1. Then F(x) = x 1/m, x (,1), for a positive integer m, iff m EXL(n) 2 2 ( ) ( ) n m 1 ( 1) l EX L(n):L(n)+l l 1 + l ( ) ( ) n 2m 1 + ( 1) l =. l 1 + l In the case m = 1 the condition EX 2 L(n) 2EX L(n) + 2 n+1 EX L(n):L(n)+1 2 n+1 + 3 n + 1 = characterizes the uniform distribution F(x) = x, x (, 1).

Characterizations of uniform and exponential distributions 311 3. Characterization of the Weibull distribution. The main result of this section is contained in the following statement. Theorem 3. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F and assume E min(x 1,...,X k ) 2p < for a fixed integer k 1 and some p > 1. Suppose that N is a positive integer-valued random variable independent of {X n,n 1}. Then F(x) = 1 exp( x 1/m ), x >, for a positive integer m, iff (3.1) E(Y (k) N )2 2k m (N + m 1)! E Y (k) (N + 2m 1)! N+m (N 1)! +k 2m E = (N 1)! provided that EN 2m <, m 1. In the case m = 1 the condition E(Y (k) N )2 2k 1 ENY (k) N+1 + k 2 EN(N + 1) = characterizes F(x) = 1 exp( x), x >, when EN 2 <. P r o o f. First consider non-random N. Then the left hand side of (3.1) equals ( ( ) m ) 2 b(n) := kn F 1 1 (t) log 1 t as (n + m 1)! E k m Y (k) n+m = = kn (log (n + 2m 1)! k 2m. ( log(1 t)) n 1 (1 t) k 1 dt 1 1 t )2m+n 1 (1 t) k 1 dt Hence by independence of N and X s, (3.1) is equivalent to b(n)p[n = n] =, n=1 which is equivalent to F(x) = 1 exp( x 1/m ), x >. For the case k = 1 we have the following characterizing condition. Theorem 3. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that E X 1 2p < for some p > 1, and assume that N is a positive integer-valued random variable independent of {X n,n 1}. Then F(x) = 1 exp( x 1/m ), x (, ), for

312 Z. Grudzień and D. Szynal some positive integer m 1, iff EX 2 L(N) (N + m 1)! (N + 2m 1)! 2E X L(N+m) + E = (N 1)! (N 1)! provided that EN 2m <, m 1. In particular (m = 1) the condition EX 2 L(N) 2ENX L(N+1) + EN(N + 1) = characterizes F(x) = 1 exp( x), x >, when EN 2 <. In the case when P[N = n] = 1 we have the following characterization conditions of the Weibull distribution. Theorem 4. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that E min(x 1,...,X k ) 2p < for a fixed integer k 1 and some p > 1. Then F(x) = 1 exp( x 1/m ), x (, ), for some positive integer m 1, iff (3.2) E(Y (k) n ) 2 2 In the case n = 1 the condition (n + m 1)! (k) EY km n+m + (3.3) EX1:k 2 2m! (k) EY km m+1 + (2m)! k 2m = (n + 2m 1)! =. k2m characterizes F(x) = 1 exp( x 1/m ), x >, and for m = 1 the condition (3.2) becomes E(Y (k) 1 ) 2 2 (k) EY 2 + 2 k k 2 =, proving that each set {E(Y (k) 1 ) 2,EY (k) 2 }, k 1, characterizes the exponential distribution. From Theorem 4 for k = 1 we have the following result. Theorem 4 (cf. [6]). Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function such that E X 1 2p < for some p > 1. Then F(x) = 1 exp( x 1/m ), x >, for some positive integer m 1, iff EX 2 L(n) + m 1)! (n + 2m 1)! 2(n EX L(n+m) + =. 4. Characterization conditions based on a randomization of k. Finally, we note that some characterization conditions in terms of moments of the minimal statistic X 1:K (cf. [5], [3]) can be obtained from Theorem 1 and 3, respectively, by a randomization of k in the kth record value (with N = 1 a.s.).

Characterizations of uniform and exponential distributions 313 Theorem 5. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that EX1 2 < for some p > 1. Suppose that K is a positive integer-valued random variable independent of {X n,n 1} with EK <. Then F(x) = x 1/m, x (,1), for some positive integer m 1, iff m (4.1) EX1:K 2 2 ( ) m ( 1) l E K l K + l X 1:K+l ( ) 2m + ( 1) l E K l K + l =. Corollary. If a positive integer random variable K obeys the logarithmic probability function P[K = k] = αθk k, k = 1,2,... ; < θ < 1, α = 1 log(1 θ), then F(x) = x 1/m, x (,1), for some positive integer m 1, iff m ( ) m (4.2) EX1:K 2 2 ( 1) l E K l K + l X 1:K+l + l=1 ( 2m l )( 1) l 1θ l [ 1 α l k=1 θ k ] + 1 =. k In the case m = 1 we see that the condition ( EX1:K [αex 2 2 + 1 1 ] ( 3 )EX 1:K +α θ 2 1 ( θ 1 θ) 1 2 ) log(1 θ) = characterizes the uniform distribution on (,1) (cf. [5]). Theorem 6. Let {X n,n 1} be a sequence of i.i.d. random variables with a common distribution function F such that EX 2 1 < and let K be a positive integer-valued random variable independent of {X n,n 1} such that EK m+1 < for a fixed m 1. Then F(x) = 1 exp( x 1/m ), x >, iff EX 2 1:K 2m!EK m Y (K) m+1 + (2m)!EK 2m =. For the case m = 1 the condition EX 2 1:K 2EK 1 Y (K) 2 + 2EK 2 = characterizes F(x) = 1 exp( x), x >. Hence we see that the set {EX1:K 2,EK 1 Y (K) 2,EK 2 } characterizes the exponential distribution, and in particular we conclude that {EX1,EX 2 L(2) } characterizes the exponential distribution (cf. [4], [6]).

314 Z. Grudzień and D. Szynal References [1] W.DziubdzielaandB.Kopociński,Limitingpropertiesofthek-threcordvalues, Appl. Math.(Warsaw) 15(1976), 187 19. [2] Z.GrudzieńandD.Szynal,Ontheexpectedvaluesofk-threcordvaluesand associated characterizations of distributions, in: Prob. Statist. Decision Theory, Proc. 4th Pannonian Sympos. Math. Statist., Reidel, 1985, 119 127. [3],, Characterizations of distributions in terms of record statistics with random index, Discuss. Math. Algebra Stochastic Methods 16(1996), 1 9. [4] G. D. L i n, Characterizations of continuous distributions via expected values of two functions of order statistics, Sankhyā A 52(199), 84 9. [5] G.D.LinandY.H.Too,Characterizationsofdistributionsviamomentsoforder statistics when sample size is random, SEA Bull. Math. 15(1991), 139 144. [6],, Characterizations of uniform and exponential distributions, Statist. Probab. Lett. 7(1989), 357 359. Zofia Grudzień and Dominik Szynal Department of Mathematics Maria Curie-Sk lodowska University pl. M. Curie-Sk lodowskiej 1 2-31 Lublin, Poland E-mail: szynal@golem.umcs.lublin.pl szynald@plumcs11.bitnet Received on 9.5.1996; revised version on 2.12.1996