A General Deep Learning Framework for Wireless Resource Allocation under Discrete Constraints
Yikun Wang, Yang Li, Yik-Chung Wu, and Rui Zhang

TL;DR
This paper introduces a novel deep learning framework that models discrete variables probabilistically, effectively addressing zero-gradient issues and constraints in wireless resource allocation problems.
Contribution
The paper presents a general DL framework using support sets and probabilistic modeling to handle discrete variables, constraints, and non-SPSD properties in wireless resource allocation.
Findings
Outperforms existing methods in system performance
Enhances computational efficiency in resource allocation
Successfully handles complex discrete constraints
Abstract
While deep learning (DL)-based methods have achieved remarkable success in continuous wireless resource allocation, efficient solutions for problems involving discrete variables remain challenging. This is primarily due to the zero-gradient issue in backpropagation, the difficulty of enforcing intricate constraints with discrete variables, and the inability in generating solutions with non-same-parameter-same-decision (non-SPSD) property. To address these challenges, this paper proposes a general DL framework by introducing the support set to represent the discrete variables. We model the elements of the support set as random variables and learn their joint probability distribution. By factorizing the joint probability as the product of conditional probabilities, each conditional probability is sequentially learned. This probabilistic modeling directly tackles all the aforementioned…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Indoor and Outdoor Localization Technologies · Wireless Networks and Protocols
