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A New Data Processing Inequality and Its Applications in Distributed Source and Channel Coding

机译:一种新的数据处理不等式及其在分布式信源和信道编码中的应用

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摘要

In the distributed coding of correlated sources, the problem of characterizing the joint probability distribution of a pair of random variables satisfying an $n$ -letter Markov chain arises. The exact solution of this problem is intractable. In this paper, we seek a single-letter necessary condition for this $n$-letter Markov chain. To this end, we propose a new data processing inequality on a new measure of correlation through a spectral method. Based on this new data processing inequality, we provide a single-letter necessary condition for the required joint probability distribution. We apply our results to two specific examples involving the distributed coding of correlated sources: multiple-access channel with correlated sources and multiterminal rate-distortion region, and propose new necessary conditions for these two problems.
机译:在相关源的分布式编码中,出现了表征满足$ n $个字母马尔可夫链的一对随机变量的联合概率分布的问题。这个问题的确切解决方案是棘手的。在本文中,我们为这个$ n $个字母的马尔可夫链寻找一个单字母的必要条件。为此,我们提出了一种新的数据处理不等式,该新的数据处理不等式是通过频谱方法在一种新的相关度量上。基于这种新的数据处理不等式,我们为所需的联合概率分布提供了一个单字母的必要条件。我们将我们的结果应用于涉及相关源的分布式编码的两个特定示例:具有相关源和多终端速率失真区域的多路访问信道,并针对这两个问题提出了新的必要条件。

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