How to Achieve the Capacity of Asymmetric Channels
Marco Mondelli, S. Hamed Hassani, R\"udiger Urbanke

TL;DR
This paper surveys advanced coding techniques that enable reliable data transmission close to the capacity of asymmetric channels, focusing on modern coding paradigms and their practical implementations.
Contribution
It introduces and analyzes three coding paradigms for asymmetric channels, including their theoretical foundations and how recent codes like polar and spatially coupled codes can be employed.
Findings
Derives a scaling law relating gap to capacity and input/output alphabet sizes.
Shows how to adapt polar and spatially coupled codes for asymmetric channels.
Provides conditions for combining source and channel codes to achieve capacity.
Abstract
We survey coding techniques that enable reliable transmission at rates that approach the capacity of an arbitrary discrete memoryless channel. In particular, we take the point of view of modern coding theory and discuss how recent advances in coding for symmetric channels help provide more efficient solutions for the asymmetric case. We consider, in more detail, three basic coding paradigms. The first one is Gallager's scheme that consists of concatenating a linear code with a non-linear mapping so that the input distribution can be appropriately shaped. We explicitly show that both polar codes and spatially coupled codes can be employed in this scenario. Furthermore, we derive a scaling law between the gap to capacity, the cardinality of the input and output alphabets, and the required size of the mapper. The second one is an integrated scheme in which the code is used both for…
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