关于一般概率分布的广义典型性

Wuling Liu, Xiaoli Chu, Jie Zhang
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引用次数: 2

摘要

典型序列方法是信息论渐近分析的一个基本工具。条件典型性引理是典型序列方法中最常用的引理之一。最近的研究将典型性的定义推广到一般字母或一般概率分布。然而,对于积空间上的一般分布,仍然缺乏基于典型性定义的条件典型引理。本文提出了一般字母和一般概率分布的广义联合典型性,并在此基础上得到了传统条件典型性引理和联合典型性引理的对应物。作为典型引理的应用,我们证明了所提出的广义典型性的填充和覆盖,然后恢复了一般Gelfand-Pinsker编码上容量定理的直接部分。我们还证明了广义典型性的一个互覆盖引理,从而得到了一般广播信道容量区域的马尔顿型内界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On a generalised typicality with respect to general probability distributions
The method of typical sequences is a fundamental tool in asymptotic analyses of information theory. The conditional typicality lemma is one of the most commonly used lemmas in the method of typical sequences. Recent works have generalised the definition of typicality to general alphabets or general probability distributions. However, there is still a lack of the conditional typicality lemma based on the definition of typicality with respect to general distributions on the product space. In this paper, we propose a generalised joint typicality for general alphabets and with respect to general probability distributions, and obtain the counterpart of conventional conditional and joint typicality lemmas based on the generalised typicality. As applications of the typicality lemmas, we prove the packing and coverings for the proposed generalised typicality, and then recover the direct part of the capacity theorem on the general Gelfand-Pinsker coding. We also prove a mutual covering lemma for the generalised typicality, and then obtain the Marton-type inner bound to the capacity region of the general broadcast channel.
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