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Graph Learning for Parameter Prediction of Quantum Approximate Optimization Algorithm

Authors :
Liang, Zhiding
Liu, Gang
Liu, Zheyuan
Cheng, Jinglei
Hao, Tianyi
Liu, Kecheng
Ren, Hang
Song, Zhixin
Liu, Ji
Ye, Fanny
Shi, Yiyu
Publication Year :
2024

Abstract

In recent years, quantum computing has emerged as a transformative force in the field of combinatorial optimization, offering novel approaches to tackling complex problems that have long challenged classical computational methods. Among these, the Quantum Approximate Optimization Algorithm (QAOA) stands out for its potential to efficiently solve the Max-Cut problem, a quintessential example of combinatorial optimization. However, practical application faces challenges due to current limitations on quantum computational resource. Our work optimizes QAOA initialization, using Graph Neural Networks (GNN) as a warm-start technique. This sacrifices affordable computational resource on classical computer to reduce quantum computational resource overhead, enhancing QAOA's effectiveness. Experiments with various GNN architectures demonstrate the adaptability and stability of our framework, highlighting the synergy between quantum algorithms and machine learning. Our findings show GNN's potential in improving QAOA performance, opening new avenues for hybrid quantum-classical approaches in quantum computing and contributing to practical applications.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.03310
Document Type :
Working Paper