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Approximate Message-Passing Decoder and Capacity Achieving Sparse Superposition Codes

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TLDR
In this article, the approximate message-passing decoder for sparse superposition coding on the additive white Gaussian noise channel was studied and two solutions to reach the Shannon capacity were proposed: 1) a power allocation strategy and 2) spatial coupling.
Abstract
We study the approximate message-passing decoder for sparse superposition coding on the additive white Gaussian noise channel and extend our preliminary work. We use heuristic statistical-physics-based tools, such as the cavity and the replica methods, for the statistical analysis of the scheme. While superposition codes asymptotically reach the Shannon capacity, we show that our iterative decoder is limited by a phase transition similar to the one that happens in low density parity check codes. We consider two solutions to this problem, that both allow to reach the Shannon capacity: 1) a power allocation strategy and 2) the use of spatial coupling, a novelty for these codes that appears to be promising. We present, in particular, simulations, suggesting that spatial coupling is more robust and allows for better reconstruction at finite code lengths. Finally, we show empirically that the use of a fast Hadamard-based operator allows for an efficient reconstruction, both in terms of computational time and memory, and the ability to deal with very large messages.

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Citations
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Optimal errors and phase transitions in high-dimensional generalized linear models

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Non-Bayesian Activity Detection, Large-Scale Fading Coefficient Estimation, and Unsourced Random Access With a Massive MIMO Receiver

TL;DR: In this article, the problem of user activity detection and large-scale fading coefficient estimation in a random access wireless uplink with a massive MIMO base station with a large number of antennas and a number of wireless single-antenna devices (users) was studied.
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SPARCs for Unsourced Random Access

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Non-Bayesian Activity Detection, Large-Scale Fading Coefficient Estimation, and Unsourced Random Access with a Massive MIMO Receiver

TL;DR: This work analyzes a constrained version of the Maximum Likelihood (ML) problem (a combinatorial optimization with exponential complexity) and finds the same fundamental scaling law for the number of identifiable users and provides two algorithms based on Non-Negative Least-Squares.
Journal ArticleDOI

Capacity-achieving Sparse Superposition Codes via Approximate Message Passing Decoding

TL;DR: In this article, an approximate message passing decoder for sparse superposition codes was proposed, whose decoding complexity scales linearly with the size of the design matrix, and it was shown to asymptotically achieve the AWGN capacity with an appropriate power allocation.
References
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TL;DR: In this article, the authors introduce a new class of structured compressible signals along with a new sufficient condition for robust structured compressibility signal recovery that they dub the restricted amplification property, which is the natural counterpart to the restricted isometry property of conventional CS.
Journal ArticleDOI

Solution of 'Solvable model of a spin glass'

TL;DR: In this paper, the Sherrmgton-Kirkpatrick model of a spin glass is solved by a mean field technique which is probably exact in the limit of infinite range interactions.
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