Multi-Agent Feedback Enabled Neural Networks for Intelligent Communications
Fanglei Sun, Yang Li, Ying Wen, Jingchen Hu, Jun Wang, Yang Yang, Kai, Li

TL;DR
This paper introduces a multi-agent feedback neural network framework, MAFENN, which enhances learning capabilities for complex nonlinear systems and demonstrates superior performance in wireless communication equalization tasks.
Contribution
The paper proposes the MAFENN framework with a theoretical formulation as a Feedback Stackelberg game, improving feedback learning and feature abstraction in neural networks.
Findings
Outperforms traditional equalizers by about 2 dB in linear channels.
Shows significant performance gains in nonlinear channels.
Demonstrates robustness and effectiveness in complex wireless environments.
Abstract
In the intelligent communication field, deep learning (DL) has attracted much attention due to its strong fitting ability and data-driven learning capability. Compared with the typical DL feedforward network structures, an enhancement structure with direct data feedback have been studied and proved to have better performance than the feedfoward networks. However, due to the above simple feedback methods lack sufficient analysis and learning ability on the feedback data, it is inadequate to deal with more complicated nonlinear systems and therefore the performance is limited for further improvement. In this paper, a novel multi-agent feedback enabled neural network (MAFENN) framework is proposed, which make the framework have stronger feedback learning capabilities and more intelligence on feature abstraction, denoising or generation, etc. Furthermore, the MAFENN framework is…
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Taxonomy
TopicsNeural Networks and Applications · Target Tracking and Data Fusion in Sensor Networks · Blind Source Separation Techniques
MethodsDense Connections · Feedforward Network
