Article ID Journal Published Year Pages File Type
1147115 Journal of Multivariate Analysis 2009 17 Pages PDF
Abstract

Let f:X→Rf:X→R be a convex mapping and XX a Hilbert space. In this paper we prove the following refinement of Jensen’s inequality: E(f|X∈A)≥E(f|X∈B)E(f|X∈A)≥E(f|X∈B) for every A,BA,B such that E(X|X∈A)=E(X|X∈B)E(X|X∈A)=E(X|X∈B) and B⊂AB⊂A. Expectations of Hilbert-space-valued random elements are defined by means of the Pettis integrals. Our result generalizes a result of [S. Karlin, A. Novikoff, Generalized convex inequalities, Pacific J. Math. 13 (1963) 1251–1279], who derived it for X=RX=R. The inverse implication is also true if PP is an absolutely continuous probability measure. A convexity criterion based on the Jensen-type inequalities follows and we study its asymptotic accuracy when the empirical distribution function based on an nn-dimensional sample approximates the unknown distribution function. Some statistical applications are addressed, such as nonparametric estimation and testing for convex regression functions or other functionals.

Related Topics
Physical Sciences and Engineering Mathematics Numerical Analysis
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