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Non-Asymptotic Converse Bounds and Refined Asymptotics for Two Source Coding Problems

机译:两个源编码问题的非渐近逆界和精细渐近性

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In this paper, we revisit two multi-terminal lossy source coding problems: the lossy source coding problem with side information available at the encoder and one of the two decoders, which we term as the Kaspi problem (Kaspi, 1994), and the multiple description coding problem with one semi-deterministic distortion measure, which we refer to as the Fu-Yeung problem (Fu and Yeung, 2002). For the Kaspi problem, we first present the properties of optimal test channels. Subsequently, we generalize the notion of the distortion-tilted information density for the lossy source coding problem to the Kaspi problem and prove a non-asymptotic converse bound using the properties of optimal test channels and the well-defined distortion-tilted information density. Finally, for discrete memoryless sources, we derive refined asymptotics which includes the second-order, large, and moderate deviations asymptotics. In the converse proof of second-order asymptotics, we apply the Berry-Esseen theorem to the derived non-asymptotic converse bound. The achievability proof follows by first proving a type-covering lemma tailored to the Kaspi problem, then properly Taylor expanding the well-defined distortion-tilted information densities and finally applying the Berry-Esseen theorem. We then generalize the methods used in the Kaspi problem to the Fu-Yeung problem. As a result, we obtain the properties of optimal test channels for the minimum sum-rate function, a non-asymptotic converse bound and refined asymptotics for discrete memoryless sources. Since the successive refinement problem is a special case of the Fu-Yeung problem, as a by-product, we obtain a non-asymptotic converse bound for the successive refinement problem, which is a strict generalization of the non-asymptotic converse bound for successively refinable sources (Zhou, Tan, and Motani, 2017).
机译:在本文中,我们重新审视了两个多端有损源编码问题:有损信息源编码问题,在编码器和两个解码器之一中提供了边信息,我们将其称为Kaspi问题(Kaspi,1994),以及多个具有一个半确定性失真度量的描述编码问题,我们称为傅-杨问题(傅和杨,2002)。对于Kaspi问题,我们首先介绍最佳测试通道的属性。随后,我们将有损源编码问题的失真倾斜信息密度概念推广到Kaspi问题,并使用最佳测试通道和定义良好的失真倾斜信息密度的性质证明了非渐近逆界。最后,对于离散的无记忆源,我们推导了精细的渐近性,包括二阶,大和中等偏差渐近性。在二阶渐近性的逆证明中,我们将Berry-Esseen定理应用于导出的非渐近逆界。可实现性的证明是首先证明适合于Kaspi问题的类型覆盖引理,然后适当地泰勒扩展明确定义的倾斜倾斜的信息密度,最后应用Berry-Esseen定理。然后,我们将在Kaspi问题中使用的方法推广到Fu-Yeung问题。结果,我们获得了针对最小和速率函数,非渐近逆界和离散无记忆源的渐近渐近性的最佳测试通道的属性。由于连续细化问题是富阳问题的特例,因此,作为副产品,我们获得了连续细化问题的非渐近逆界,这是对连续渐近非渐近逆界的严格推广。可提炼资源(Zhou,Tan和Motani,2017年)。

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