Scalable Neural Quantum State based Kernel Polynomial Method for Optical Properties from the First Principle
Scalable Neural Quantum State based Kernel Polynomial Method for Optical Properties from the First Principle
Variational optimization of neural-network quantum state representations has achieved FCI-level accuracy for ground state calculations, yet computing optical properties involving excited states remains challenging. In this work, we present a neural-network-based variational quantum Monte Carlo approach for ab-initio absorption spectra. We leverage parallel batch autoregressive sampling and GPU-supported local energy parallelism to efficiently compute ground states of complex systems. By integrating neural quantum ground states with the kernel polynomial method, our approach accurately calculates absorption spectra for large molecules with over 50 electrons, achieving FCI-level precision. The proposed algorithm demonstrates superior scalability and reduced runtime compared to FCI, marking a significant step forward in optical property calculations for large-scale quantum systems.
Wei Liu、Rui-Hao Bi、Wenjie Dou
物理学信息科学、信息技术
Wei Liu,Rui-Hao Bi,Wenjie Dou.Scalable Neural Quantum State based Kernel Polynomial Method for Optical Properties from the First Principle[EB/OL].(2025-06-09)[2025-06-28].https://arxiv.org/abs/2506.07430.点此复制
评论