D2D Power Allocation via Quantum Graph Neural Network
Le, Tung Giang, Nguyen, Xuan Tung, Hwang, Won-Joo
–arXiv.org Artificial Intelligence
Classical GNNs excel at graph learning but incur high computational costs in large-scale settings. We present a fully quantum Graph Neural Network (QGNN) that implements message passing via Parameterized Quantum Circuits (PQCs). Our Quantum Graph Convolutional Layers (QGCLs) encode features into quantum states, process graphs with NISQ-compatible unitaries, and retrieve embeddings through measurement. Applied to D2D power control for SINR maximization, our QGNN matches classical performance with fewer parameters and inherent parallelism. This end-to-end PQC-based GNN marks a step toward quantum-accelerated wireless optimization.
arXiv.org Artificial Intelligence
Nov-25-2025