AbstractIf X1 and X2 are independent and identically distributed (i. i. d.) with finite variance, then (X1+X2)√2 has the same distribution as X1 if and only if X1 is normal with mean zero (Pólya [9]). The idea of using linear combinations of i. i. d. random variables to characterize the normal has since been extended to the case where σ∞i=1aiXi has the same distribution as X1. In particular if at least two of the ai's are non-zero and X1 has finite variance, then Laha and Lukacs [8] showed that X1 is normal. They also [7] established the same result without the assumption of finite variance. The purpose of this note is to present a different and easier proof of the characterization under the assumption of finite variance. The idea of the pr...
AbstractIt is the purpose of this paper to show that, when X and Y are independent normal random var...
AbstractIt is known that if the statistic Y = Σj=1n(Xj + aj)2 is drawn from a population which is di...
AbstractLet Xj (j = 1,…,n) be i.i.d. random variables, and let Y′ = (Y1,…,Ym) and X′ = (X1,…,Xn) be ...
AbstractIf X1 and X2 are independent and identically distributed (i. i. d.) with finite variance, th...
AbstractLet X1, X2,…, be independent, identically distributed random variables. Suppose that the lin...
AbstractIt is the purpose of this note to provide a direct proof of the fact that, when X and Y are ...
If X1 and X2 are independent and identically distributed (i.i.d.) random variables with finite varia...
Texte intégral sur le site: https://www.scienpress.comIn this paper, we present three remarkable pro...
AbstractFor a scale mixture of normal vector, X=A1/2G, where X, G∈Rn and A is a positive variable, i...
For a scale mixture of normal vector, X = A1/2G, where X G ∈ Rnand A is a positive variable, indepen...
International audienceIn this paper, we present three remarkable properties of the normal distributi...
AbstractIt is well known that i.i.d. (independent and identically distributed) normal random variabl...
Texte intégral sur le site: https://www.scienpress.comInternational audienceIn this paper, we presen...
Texte intégral sur le site: https://www.scienpress.comInternational audienceIn this paper, we presen...
AbstractIt is established that a vector (X′1, X′2, …, X′k) has a multivariate normal distribution if...
AbstractIt is the purpose of this paper to show that, when X and Y are independent normal random var...
AbstractIt is known that if the statistic Y = Σj=1n(Xj + aj)2 is drawn from a population which is di...
AbstractLet Xj (j = 1,…,n) be i.i.d. random variables, and let Y′ = (Y1,…,Ym) and X′ = (X1,…,Xn) be ...
AbstractIf X1 and X2 are independent and identically distributed (i. i. d.) with finite variance, th...
AbstractLet X1, X2,…, be independent, identically distributed random variables. Suppose that the lin...
AbstractIt is the purpose of this note to provide a direct proof of the fact that, when X and Y are ...
If X1 and X2 are independent and identically distributed (i.i.d.) random variables with finite varia...
Texte intégral sur le site: https://www.scienpress.comIn this paper, we present three remarkable pro...
AbstractFor a scale mixture of normal vector, X=A1/2G, where X, G∈Rn and A is a positive variable, i...
For a scale mixture of normal vector, X = A1/2G, where X G ∈ Rnand A is a positive variable, indepen...
International audienceIn this paper, we present three remarkable properties of the normal distributi...
AbstractIt is well known that i.i.d. (independent and identically distributed) normal random variabl...
Texte intégral sur le site: https://www.scienpress.comInternational audienceIn this paper, we presen...
Texte intégral sur le site: https://www.scienpress.comInternational audienceIn this paper, we presen...
AbstractIt is established that a vector (X′1, X′2, …, X′k) has a multivariate normal distribution if...
AbstractIt is the purpose of this paper to show that, when X and Y are independent normal random var...
AbstractIt is known that if the statistic Y = Σj=1n(Xj + aj)2 is drawn from a population which is di...
AbstractLet Xj (j = 1,…,n) be i.i.d. random variables, and let Y′ = (Y1,…,Ym) and X′ = (X1,…,Xn) be ...