Model-based Deep Learning for QoS-Aware Rate-Splitting Multiple Access Wireless Systems
Hanwen Zhang, Mingzhe Chen, Alireza Vahid, Feng Ye, Haijian Sun

TL;DR
This paper introduces a model-driven deep unfolding algorithm for QoS-aware rate-splitting multiple access in wireless systems, enhancing efficiency, robustness, and generalization with limited training data.
Contribution
It proposes a novel deep unfolding approach that combines traditional algorithms with deep learning to improve resource allocation in wireless communications.
Findings
Achieves near-optimal efficiency with only 0.024% violation rate.
Demonstrates robustness in out-of-distribution tests.
Effective training with as few as 50 samples.
Abstract
Next generation communications demand for better spectrum management, lower latency, and guaranteed quality-of-service (QoS). Recently, Artificial intelligence (AI) has been widely introduced to advance these aspects in next generation wireless systems. However, such AI applications suffer from limited training data, low robustness, and poor generalization capabilities. To address these issues, a model-driven deep unfolding (DU) algorithm is introduced in this paper to bridge the gap between traditional model-driven communication algorithms and data-driven deep learning. Focusing on the QoS-aware rate-splitting multiple access (RSMA) resource allocation problem in multi-user communications, a conventional fractional programming (FP) algorithm is first applied as a benchmark. The solution is then refined by the application of projection gradient descent (PGD). DU is employed to further…
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Taxonomy
TopicsWireless Body Area Networks · Wireless Communication Networks Research · Advanced MIMO Systems Optimization
