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Open AccessJournal ArticleDOI

Threshold Saturation via Spatial Coupling: Why Convolutional LDPC Ensembles Perform So Well over the BEC

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TLDR
The fundamental mechanism that explains why “convolutional-like” or “spatially coupled” codes perform so well is described, and it is conjecture that for a large range of graphical systems a similar saturation of the “dynamical” threshold occurs once individual components are coupled sufficiently strongly.
Abstract
Convolutional low-density parity-check (LDPC) ensembles, introduced by Felstrom and Zigangirov, have excellent thresholds and these thresholds are rapidly increasing functions of the average degree. Several variations on the basic theme have been proposed to date, all of which share the good performance characteristics of convolutional LDPC ensembles. We describe the fundamental mechanism that explains why “convolutional-like” or “spatially coupled” codes perform so well. In essence, the spatial coupling of individual codes increases the belief-propagation (BP) threshold of the new ensemble to its maximum possible value, namely the maximum a posteriori (MAP) threshold of the underlying ensemble. For this reason, we call this phenomenon “threshold saturation.” This gives an entirely new way of approaching capacity. One significant advantage of this construction is that one can create capacity-approaching ensembles with an error correcting radius that is increasing in the blocklength. Although we prove the “threshold saturation” only for a specific ensemble and for the binary erasure channel (BEC), empirically the phenomenon occurs for a wide class of ensembles and channels. More generally, we conjecture that for a large range of graphical systems a similar saturation of the “dynamical” threshold occurs once individual components are coupled sufficiently strongly. This might give rise to improved algorithms and new techniques for analysis.

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Citations
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Journal ArticleDOI

Rate Adaptation and Reach Increase by Probabilistically Shaped 64-QAM: An Experimental Demonstration

TL;DR: A transmission system with adjustable data rate for single-carrier coherent optical transmission is proposed, which enables high-speed transmission close to the Shannon limit, and it is experimentally demonstrated that the optical transmission of probabilistically shaped 64-QAM signals outperforms the transmission reach of regular 16- QAM and regular 64-ZAM signals.
Journal ArticleDOI

Spatially Coupled Ensembles Universally Achieve Capacity Under Belief Propagation

TL;DR: The key technical result is a proof that, under belief-propagation decoding, spatially coupled ensembles achieve essentially the area threshold of the underlying uncoupled ensemble.
Proceedings ArticleDOI

Spatially coupled ensembles universally achieve capacity under belief propagation

TL;DR: The key technical result is a proof that, under belief-propagation decoding, spatially coupled ensembles achieve essentially the area threshold of the underlying uncoupled ensemble.
Journal ArticleDOI

Statistical physics of inference: thresholds and algorithms

TL;DR: The connection between inference and statistical physics is currently witnessing an impressive renaissance and the current state-of-the-art is reviewed, with a pedagogical focus on the Ising model which, formulated as an inference problem, is called the planted spin glass.
Journal ArticleDOI

Probabilistic reconstruction in compressed sensing: algorithms, phase diagrams, and threshold achieving matrices

TL;DR: In this paper, the authors present the probabilistic approach to reconstruction and discuss its optimality and robustness, and derive the derivation of the message passing algorithm for reconstruction and expectation maximization learning of signal model parameters.
References
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MonographDOI

Modern Coding Theory

TL;DR: This summary of the state-of-the-art in iterative coding makes this decision more straightforward, with emphasis on the underlying theory, techniques to analyse and design practical iterative codes systems.
Journal ArticleDOI

Time-varying periodic convolutional codes with low-density parity-check matrix

TL;DR: A class of convolutional codes defined by a low-density parity-check matrix and an iterative algorithm for decoding these codes is presented, showing that for the rate R=1/2 binary codes, the performance is substantially better than for ordinary convolutionian codes with the same decoding complexity per information bit.
Proceedings ArticleDOI

Practical loss-resilient codes

TL;DR: In this article, the authors presented randomized constructions of linear-time encodable and decodable codes that can transmit over lossy channels at rates extremely close to capacity.

Low-Density Parity-Check (LDPC) Codes Constructed from Protographs

J. Thorpe
TL;DR: This work introduces a new class of low-density parity-check codes constructed from a template called a protograph, which serves as a blueprint for constructing LDPC codes of arbitrary size whose performance can be predicted by analyzing the protograph.
Journal ArticleDOI

LDPC block and convolutional codes based on circulant matrices

TL;DR: A class of algebraically structured quasi-cyclic low-density parity-check (LDPC) codes and their convolutional counterparts is presented and bounds on the girth and minimum distance of the codes are found, and several possible encoding techniques are described.
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