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Sparse Regression Codes

机译:稀疏回归代码

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摘要

Developing computationally-efficient codes that approach the Shannon-theoretic limits for communication and compression has long been one of the major goals of information and coding theory. There have been significant advances towards this goal in the last couple of decades, with the emergence of turbo codes, sparse-graph codes, and polar codes. These codes are designed primarily for discrete-alphabet channels and sources. For Gaussian channels and sources, where the alphabet is inherently continuous, Sparse Superposition Codes or Sparse Regression Codes (SPARCs) are a promising class of codes for achieving the Shannon limits. This monograph provides a unified and comprehensive over-view of sparse regression codes, covering theory, algorithms, and practical implementation aspects. The first part of the monograph focuses on SPARCs for AWGN channel coding, and the second part on SPARCs for lossy compression (with squared error distortion criterion). In the third part, SPARCs are used to construct codes for Gaussian multi-terminal channel and source coding models such as broadcast channels, multiple-access channels, and source and channel coding with side information. The monograph concludes with a discussion of open problems and directions for future work.
机译:开发接近沟通和压缩的香农学限制的计算上有效的代码长期以来一直是信息和编码理论的主要目标之一。在过去几十年中,在过去几十年中,出现了涡轮编码,稀疏图形代码和极性代码,这一目标存在显着进展。这些代码主要用于离散 - 字母频道和源。对于高斯频道和源,其中字母表本质上是连续的,稀疏的叠加代码或稀疏回归码(SPARCS)是实现Shannon限制的有前途的代码。本专着提供了统一和全面的过度看过稀疏回归码,涵盖理论,算法和实际实现方面。专着的第一部分侧重于AWGN通道编码的SPARC,以及用于有损压缩的SPARC的第二部分(具有平方误差失真标准)。在第三部分中,SPARC用于构造高斯多终端信道和源编码模型的代码,例如广播信道,多个接入信道和源和侧信息的源和信道编码。专着讨论了未来工作的开放问题和方向的讨论。

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