Deep variational quantum eigensolver for excited states and its application to quantum chemistry calculation of periodic materials
Kaoru Mizuta, Mikiya Fujii, Shigeki Fujii, Kazuhide Ichikawa, Yutaka, Imamura, Yukihiro Okuno, and Yuya O. Nakagawa

TL;DR
This paper extends Deep VQE to compute excited states and applies it to quantum chemistry of periodic materials, demonstrating accurate results with fewer qubits on classical simulations.
Contribution
It introduces a modified Deep VQE scheme for excited states and applies it to periodic quantum chemistry calculations, reducing qubit requirements.
Findings
Accurately reproduces ground and first-excited-state energies within 1% error.
Reduces qubit count by two to four compared to naive VQE.
Demonstrates potential for large-scale quantum chemistry simulations on smaller quantum devices.
Abstract
A programmable quantum device that has a large number of qubits without fault-tolerance has emerged recently. Variational Quantum Eigensolver (VQE) is one of the most promising ways to utilize the computational power of such devices to solve problems in condensed matter physics and quantum chemistry. As the size of the current quantum devices is still not large for rivaling classical computers at solving practical problems, Fujii et al. proposed a method called "Deep VQE" which can provide the ground state of a given quantum system with the smaller number of qubits by combining the VQE and the technique of coarse-graining [K. Fujii, et al, arXiv:2007.10917]. In this paper, we extend the original proposal of Deep VQE to obtain the excited states and apply it to quantum chemistry calculation of a periodic material, which is one of the most impactful applications of the VQE. We first…
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