We compare estimators of the integral of a monotone function f that can be observed only at a sample of points in its domain, possibly with error. Most of the standard literature considers sampling designs ordered by refinements and compares them in terms of mean square error or, as in Goldstein et al. (2011), the stronger convex order. In this paper we compare sampling designs in the convex order without using partition refinements. Instead we order two sampling designs based on partitions of the sample space, where a fixed number of points is allocated at random to each partition element. We show that if the two random vectors whose components correspond to the number allocated to each partition element are ordered by stochastic majorizat...
We obtain some new results on normalized spacings of independent exponential random variables with p...
Let X1,...,Xm and Y1,...,Yn be independent random samples from two absolutely continuous distributio...
This dissertation presents some contributions to the theory of stochastic convexity and stochastic m...
We compare estimators of the integral of a monotone function f that can be observed only at a sample...
Abstract We compare estimators of the integral of a monotone function f that can be observed only at...
†Partially supported by MIUR-COFIN We compare estimators of the (essential) supremum and the integra...
We compare estimators of the (essential) supremum and the integral of a function "f" defined on a me...
Key words and phrases: multivariate random sums, multivariate stochastic orders, convex order, direc...
Consider random vectors formed by a finite number of independent groups of i.i.d.\ random variables,...
Let Y1,...,Yn be the order statistics of a simple random sample from a finite or infinite population...
Several new classes of discrete stochastic orderings are introduced for comparing discrete random va...
The purpose of this note is two-fold. First we derive a simple condition under which two s-convex or...
International audienceIn this paper the meaning of the stochastic ordering relation is studied when ...
AbstractThe supermodular and the symmetric supermodular stochastic orders have been cursorily studie...
This dissertation adds some new results to the theory of stochastic orders. Chapter 1 contains defin...
We obtain some new results on normalized spacings of independent exponential random variables with p...
Let X1,...,Xm and Y1,...,Yn be independent random samples from two absolutely continuous distributio...
This dissertation presents some contributions to the theory of stochastic convexity and stochastic m...
We compare estimators of the integral of a monotone function f that can be observed only at a sample...
Abstract We compare estimators of the integral of a monotone function f that can be observed only at...
†Partially supported by MIUR-COFIN We compare estimators of the (essential) supremum and the integra...
We compare estimators of the (essential) supremum and the integral of a function "f" defined on a me...
Key words and phrases: multivariate random sums, multivariate stochastic orders, convex order, direc...
Consider random vectors formed by a finite number of independent groups of i.i.d.\ random variables,...
Let Y1,...,Yn be the order statistics of a simple random sample from a finite or infinite population...
Several new classes of discrete stochastic orderings are introduced for comparing discrete random va...
The purpose of this note is two-fold. First we derive a simple condition under which two s-convex or...
International audienceIn this paper the meaning of the stochastic ordering relation is studied when ...
AbstractThe supermodular and the symmetric supermodular stochastic orders have been cursorily studie...
This dissertation adds some new results to the theory of stochastic orders. Chapter 1 contains defin...
We obtain some new results on normalized spacings of independent exponential random variables with p...
Let X1,...,Xm and Y1,...,Yn be independent random samples from two absolutely continuous distributio...
This dissertation presents some contributions to the theory of stochastic convexity and stochastic m...