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Main Author: Klebanov, Ilja
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2304.04856
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author Klebanov, Ilja
author_facet Klebanov, Ilja
contents Jensen's inequality is ubiquitous in measure and probability theory, statistics, machine learning, information theory and many other areas of mathematics and data science. It states that, for any convex function $f\colon K \to \mathbb{R}$ defined on a convex domain $K \subseteq \mathbb{R}^{d}$ and any random variable $X$ taking values in $K$, $\mathbb{E}[f(X)] \geq f(\mathbb{E}[X])$. In this paper, sharp upper and lower bounds on $\mathbb{E}[f(X)]$, termed ``graph convex hull bounds'', are derived for arbitrary functions $f$ on arbitrary domains $K$, thereby extensively generalizing Jensen's inequality. The derivation of these bounds necessitates the investigation of the convex hull of the graph of $f$, which can be challenging for complex functions. On the other hand, once these inequalities are established, they hold, just like Jensen's inequality, for \emph{any} $K$-valued random variable $X$. Therefore, these bounds are of particular interest in cases where $f$ is relatively simple and $X$ is complicated or unknown. Both finite- and infinite-dimensional domains and codomains of $f$ are covered as well as analogous bounds for conditional expectations and Markov operators.
format Preprint
id arxiv_https___arxiv_org_abs_2304_04856
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Graph Convex Hull Bounds as generalized Jensen Inequalities
Klebanov, Ilja
Statistics Theory
Functional Analysis
Probability
26D15, 28B05, 46A55, 52A40, 60B11, 37A30
Jensen's inequality is ubiquitous in measure and probability theory, statistics, machine learning, information theory and many other areas of mathematics and data science. It states that, for any convex function $f\colon K \to \mathbb{R}$ defined on a convex domain $K \subseteq \mathbb{R}^{d}$ and any random variable $X$ taking values in $K$, $\mathbb{E}[f(X)] \geq f(\mathbb{E}[X])$. In this paper, sharp upper and lower bounds on $\mathbb{E}[f(X)]$, termed ``graph convex hull bounds'', are derived for arbitrary functions $f$ on arbitrary domains $K$, thereby extensively generalizing Jensen's inequality. The derivation of these bounds necessitates the investigation of the convex hull of the graph of $f$, which can be challenging for complex functions. On the other hand, once these inequalities are established, they hold, just like Jensen's inequality, for \emph{any} $K$-valued random variable $X$. Therefore, these bounds are of particular interest in cases where $f$ is relatively simple and $X$ is complicated or unknown. Both finite- and infinite-dimensional domains and codomains of $f$ are covered as well as analogous bounds for conditional expectations and Markov operators.
title Graph Convex Hull Bounds as generalized Jensen Inequalities
topic Statistics Theory
Functional Analysis
Probability
26D15, 28B05, 46A55, 52A40, 60B11, 37A30
url https://arxiv.org/abs/2304.04856