Distributed Quantum Gaussian Processes for Multi-Agent Systems
AI 摘要
提出一种用于多智能体系统的分布式量子高斯过程方法,提升建模能力和可扩展性。
主要贡献
- 提出Distributed Quantum Gaussian Process (DQGP)方法
- 开发Distributed consensus Riemannian ADMM (DR-ADMM)算法
- 使用量子模拟器进行数值实验验证有效性
方法论
结合量子计算和高斯过程,利用DR-ADMM算法聚合局部智能体模型,形成全局模型,并在量子模拟器上进行验证。
原文摘要
Gaussian Processes (GPs) are a powerful tool for probabilistic modeling, but their performance is often constrained in complex, largescale real-world domains due to the limited expressivity of classical kernels. Quantum computing offers the potential to overcome this limitation by embedding data into exponentially large Hilbert spaces, capturing complex correlations that remain inaccessible to classical computing approaches. In this paper, we propose a Distributed Quantum Gaussian Process (DQGP) method in a multiagent setting to enhance modeling capabilities and scalability. To address the challenging non-Euclidean optimization problem, we develop a Distributed consensus Riemannian Alternating Direction Method of Multipliers (DR-ADMM) algorithm that aggregates local agent models into a global model. We evaluate the efficacy of our method through numerical experiments conducted on a quantum simulator in classical hardware. We use real-world, non-stationary elevation datasets of NASA's Shuttle Radar Topography Mission and synthetic datasets generated by Quantum Gaussian Processes. Beyond modeling advantages, our framework highlights potential computational speedups that quantum hardware may provide, particularly in Gaussian processes and distributed optimization.