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Main Authors: Vaillant, Maxime, Jeannerot, Alix, Gorce, Jean-Marie
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.07708
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author Vaillant, Maxime
Jeannerot, Alix
Gorce, Jean-Marie
author_facet Vaillant, Maxime
Jeannerot, Alix
Gorce, Jean-Marie
contents We introduce a learning-based approach to optimize a joint constellation for a multi-user MIMO broadcast channel ($T$ Tx antennas, $K$ users, each with $R$ Rx antennas), with perfect channel knowledge. The aim of the optimizer (MAX-MIN) is to maximize the minimum mutual information between the transmitter and each receiver, under a sum-power constraint. The proposed optimization method do neither impose the transmitter to use superposition coding (SC) or any other linear precoding, nor to use successive interference cancellation (SIC) at the receiver. Instead, the approach designs a joint constellation, optimized such that its projection into the subspace of each receiver $k$, maximizes the minimum mutual information $I(W_k;Y_k)$ between each transmitted binary input $W_k$ and the output signal at the intended receiver $Y_k$. The rates obtained by our method are compared to those achieved with linear precoders.
format Preprint
id arxiv_https___arxiv_org_abs_2407_07708
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Joint Constellation Shaping Using Gradient Descent Approach for MU-MIMO Broadcast Channel
Vaillant, Maxime
Jeannerot, Alix
Gorce, Jean-Marie
Information Theory
Machine Learning
Networking and Internet Architecture
We introduce a learning-based approach to optimize a joint constellation for a multi-user MIMO broadcast channel ($T$ Tx antennas, $K$ users, each with $R$ Rx antennas), with perfect channel knowledge. The aim of the optimizer (MAX-MIN) is to maximize the minimum mutual information between the transmitter and each receiver, under a sum-power constraint. The proposed optimization method do neither impose the transmitter to use superposition coding (SC) or any other linear precoding, nor to use successive interference cancellation (SIC) at the receiver. Instead, the approach designs a joint constellation, optimized such that its projection into the subspace of each receiver $k$, maximizes the minimum mutual information $I(W_k;Y_k)$ between each transmitted binary input $W_k$ and the output signal at the intended receiver $Y_k$. The rates obtained by our method are compared to those achieved with linear precoders.
title Joint Constellation Shaping Using Gradient Descent Approach for MU-MIMO Broadcast Channel
topic Information Theory
Machine Learning
Networking and Internet Architecture
url https://arxiv.org/abs/2407.07708