Designing Heterogeneous GNNs with Desired Permutation Properties for Wireless Resource Allocation
Jianyu Zhao, Chenyang Yang, Tingting Liu

TL;DR
This paper presents a systematic approach to designing heterogeneous GNNs with specific permutation properties for wireless resource allocation, improving policy learning by satisfying complex permutation requirements.
Contribution
It introduces a method for constructing graphs and designing HetGNN architectures to systematically satisfy desired permutation properties in wireless policies.
Findings
Proposed a graph construction method for complex permutation properties.
Derived three sufficient conditions for HetGNN design.
Validated the approach with power allocation and hybrid precoding examples.
Abstract
Graph neural networks (GNNs) have been designed for learning a variety of wireless policies, i.e., the mappings from environment parameters to decision variables, thanks to their superior performance, and the potential in enabling scalability and size generalizability. These merits are rooted in leveraging permutation prior, i.e., satisfying the permutation property of the policy to be learned (referred to as desired permutation property). Many wireless policies are with complicated permutation properties. To satisfy these properties, heterogeneous GNNs (HetGNNs) should be used to learn such policies. There are two critical factors that enable a HetGNN to satisfy a desired permutation property: constructing an appropriate heterogeneous graph and judiciously designing the architecture of the HetGNN. However, both the graph and the HetGNN are designed heuristically so far. In this paper,…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Energy Harvesting in Wireless Networks · Wireless Networks and Protocols
Methods*Communicated@Fast*How Do I Communicate to Expedia? · Adam · Dense Connections · Weight Decay · Experience Replay · Convolution · Deep Deterministic Policy Gradient · Batch Normalization
