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Symmetrical Multilevel Diversity Coding and Subset Entropy Inequalities

机译:对称多级分集编码和子集熵不等式

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摘要

Symmetrical multilevel diversity coding (SMDC) is a classical model for coding over distributed storage. In this setting, a simple separate encoding strategy known as superposition coding was shown to be optimal in terms of achieving the minimum sum rate and the entire admissible rate region of the problem. The proofs utilized carefully constructed induction arguments, for which the classical subset entropy inequality played a key role. This paper consists of two parts. In the first part, the existing optimality proofs for classical SMDC are revisited, with a focus on their connections to subset entropy inequalities. Initially, a new sliding-window subset entropy inequality is introduced and then used to establish the optimality of superposition coding for achieving the minimum sum rate under a weaker source-reconstruction requirement. Finally, a subset entropy inequality recently proved by Madiman and Tetali is used to develop a new structural understanding of the work of Yeung and Zhang on the optimality of superposition coding for achieving the entire admissible rate region. Building on the connections between classical SMDC and the subset entropy inequalities developed in the first part, in the second part the optimality of superposition coding is extended to the cases where there is either an additional all-access encoder or an additional secrecy constraint.
机译:对称多级分集编码(SMDC)是用于在分布式存储上进行编码的经典模型。在这种情况下,就实现问题的最小和率和整个允许率区域而言,一种称为叠加编码的简单单独编码策略被证明是最佳的。证明使用精心构造的归纳论证,对此经典的子集熵不等式起着关键作用。本文由两部分组成。在第一部分中,重新讨论了经典SMDC的现有最优性证明,重点在于它们与子集熵不等式的联系。最初,引入了新的滑动窗口子集熵不等式,然后将其用于建立叠加编码的最优性,以在较弱的源重构要求下实现最小总和。最后,最近由Madiman和Tetali证明的子集熵不等式用于对Yeung和Zhang在叠加编码的最优性以实现整个可允许速率区域方面的工作发展出新的结构性理解。在第一部分中建立的经典SMDC与子集熵不等式之间的联系的基础上,第二部分中,叠加编码的最优性扩展到了存在附加的全访问编码器或附加的保密约束的情况。

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