Author:
Denuit Michel,Lefèvre Claude,Utev Sergey
Abstract
In this paper, a new concept called generalized
stochastic convexity is introduced as an extension of the
classic notion of stochastic convexity. It relies on the
well-known concept of generalized convex functions and
corresponds to a stochastic convexity with respect to some
Tchebycheff system of functions. A special case discussed
in detail is the notion of stochastic s-convexity
(s ∈ [real number symbol]), which is obtained
when this system is the family of power functions
{x0, x1,...,
xs−1}. The analysis is made,
first for totally positive families of distributions and then for
families that do not enjoy that property. Further, integral
stochastic orderings, said of Tchebycheff-type, are introduced
that are induced by cones of generalized convex functions.
For s-convex functions, they reduce to the s-convex
stochastic orderings studied recently. These orderings
are then used for comparing mixtures and compound sums,
with some illustrations in epidemic theory and actuarial
sciences.
Publisher
Cambridge University Press (CUP)
Subject
Industrial and Manufacturing Engineering,Management Science and Operations Research,Statistics, Probability and Uncertainty,Statistics and Probability
Cited by
19 articles.
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