卷积网络编码的环理论基础

S.-Y.R. Li, S. Ho
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引用次数: 20

摘要

卷积网络编码处理符号流在网络中的传播,每个节点上都有一个线性时不变编码器。当符号字母表是一个字段F时,符号流就变成了F的幂级数。物理实现要求编码/解码核被限制在有限的对象上。卷积网络编码的合适域由有理幂级数而不是多项式组成,因为当网络包含循环时,多项式编码核不一定对应于多项式解码核。人们自然会想知道什么代数结构使得有理幂级数成为编码/解码核的合适领域。本文提出的答案是离散估值环(DVR)。在一个通用的DVR上,给出了卷积网络编码的一般抽象理论,并没有将卷积网络编码局限于组合时空域。抽象的概括性增强了数学的优雅性、理解的深度和对实际应用的适应性。介绍并构建了各种强度级别的最优卷积网络代码,以提供尽可能高的数据速率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ring-theoretic foundation of convolutional network coding
Convolutional network coding deals with the propagation of symbol streams through a network with a linear time-invariant encoder at every node. When the symbol alphabet is a field F, a symbol stream becomes a power series over F. Physical implementation requires the coding/decoding kernels be restricted to finite objects. A proper domain for convolutional network coding consists of rational power series rather than polynomials, because polynomial coding kernels do not necessarily correspond to polynomial decoding kernels when the network includes a cycle. One naturally wonders what algebraic structure makes rational power series a suitable domain for coding/decoding kernels. The proposed answer by this paper is discrete valuation ring (DVR). A general abstract theory of convolutional network coding is formulated over a generic DVR and does not confine convolutional network coding to the combined space-time domain. Abstract generality enhances mathematical elegance, depth of understanding, and adaptability to practical applications. Optimal convolutional network codes at various levels of strength are introduced and constructed for delivering highest possible data rates.
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