熵不等式的机器证明

R. Yeung, Cheuk Ting Li
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引用次数: 7

摘要

熵函数在信息论中起着核心作用。以不等式形式对熵函数的约束,即熵不等式(通常以所考虑的问题所施加的某些马尔可夫条件为条件),是证明反向编码定理不可或缺的工具。在这篇说明性的文章中,我们对这一基本主题进行概述。在给出熵函数的几何框架之后,我们解释了熵不等式是如何表述的,有或没有对熵函数的约束。在所有的熵不等式中,香农型不等式,即香农信息测度的非负性所隐含的不等式,是最容易理解的。本文的主要重点是验证香农型不等式,它实际上可以表述为线性规划问题。本文讨论了为此目的开发的软件包ITIP及其两个变体AITIP和PSITIP。本文最后讨论了一般情况下验证熵不等式的难度。
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Machine-Proving of Entropy Inequalities
The entropy function plays a central role in information theory. Constraints on the entropy function in the form of inequalities, viz. entropy inequalities (often conditional on certain Markov conditions imposed by the problem under consideration), are indispensable tools for proving converse coding theorems. In this expository article, we give an overview of this fundamental subject. After presenting a geometrical framework for the entropy function, we explain how an entropy inequality can be formulated, with or without constraints on the entropy function. Among all entropy inequalities, Shannon-type inequalities, namely those implied by the nonnegativity of Shannon’s information measures, are best understood. The main focus of this article is the verification of Shannon-type inequalities, which in fact can be formulated as a linear programming problem. ITIP, a software package developed for this purpose, as well as two of its variants, AITIP and PSITIP, are discussed. This article ends with a discussion on the hardness of verifying entropy inequalities in general.
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