Deep Learning for CSI Feedback: One-Sided Model and Joint Multi-Module Learning Perspectives
Yiran Guo, Wei Chen, Feifei Sun, Jiaming Cheng, Michail Matthaiou, Bo, Ai

TL;DR
This paper explores one-sided deep learning models and joint multi-module learning approaches for CSI feedback, aiming to reduce reliance on collaborative models and enhance overall system performance.
Contribution
It introduces novel one-sided CSI feedback architectures, including CSI-PPPNet, and reviews joint multi-module learning methods integrating feedback with other transceiver modules.
Findings
CSI-PPPNet handles arbitrary compression ratios.
Joint learning improves overall transceiver performance.
Discussion on future challenges and deployment issues.
Abstract
The use of deep learning (DL) for channel state information (CSI) feedback has garnered widespread attention across academia and industry. The mainstream DL architectures, e.g., CsiNet, deploy DL models on the base station (BS) side and the user equipment (UE) side, which are highly coupled and need to be trained jointly. However, two-sided DL models require collaborations between different network vendors and UE vendors, which entails considerable challenges in order to achieve consensus, e.g., model maintenance and responsibility. Furthermore, DL-based CSI feedback design invokes DL to reduce only the CSI feedback error, whereas jointly optimizing several modules at the transceivers would provide more significant gains. This article presents DL-based CSI feedback from the perspectives of one-sided model and joint multi-module learning. We herein introduce various novel one-sided CSI…
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Taxonomy
TopicsEvaluation and Performance Assessment · Student Assessment and Feedback · Educational Assessment and Pedagogy
MethodsBalanced Selection
