网络压缩:最坏情况分析

Himanshu Asnani, Ilan Shomorony, A. Avestimehr, T. Weissman
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引用次数: 9

摘要

考虑在二次失真约束下,在无记忆网络上从源节点到目标节点的分布式相关无记忆源通信问题。我们展示了以下两个互补的结果:(a)对于任意无记忆网络,在所有具有特定相关性的分布式无记忆源中,高斯源的可压缩性最差,即承认可实现的最小畸变元组集;(b)对于通过无记忆加性噪声网络通信的任意分布无记忆源,在所有具有固定相关性的噪声过程中,高斯噪声承认可实现的最小畸变元组集。在每种情况下,给定相应高斯问题的编码方案,我们提供了一种构建新编码方案的技术,该编码方案在具有相同相关结构的非高斯场景中在目标节点处实现相同的失真。
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Network compression: Worst-case analysis
We consider the problem of communicating a distributed correlated memoryless source over a memoryless network, from source nodes to destination nodes, under quadratic distortion constraints. We show the following two complementary results: (a) for an arbitrary memoryless network, among all distributed memoryless sources with a particular correlation, Gaussian sources are the worst compressible, that is, they admit the smallest set of achievable distortion tuples, and (b) for any arbitrarily distributed memoryless source to be communicated over a memoryless additive noise network, among all noise processes with a fixed correlation, Gaussian noise admits the smallest achievable set of distortion tuples. In each case, given a coding scheme for the corresponding Gaussian problem, we provide a technique for the construction of a new coding scheme that achieves the same distortion at the destination nodes in a non-Gaussian scenario with the same correlation structure.
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