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Neural-network variational quantum algorithm for simulating many-body dynamics

Chee-Kong Lee, P. Patil, Shengyu Zhang, Chang-Yu Hsieh·August 31, 2020·DOI: 10.1103/PhysRevResearch.3.023095
Computer SciencePhysics

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Abstract

We propose a neural-network variational quantum algorithm to simulate the time evolution of quantum many-body systems. Based on a modified restricted Boltzmann machine (RBM) wavefunction ansatz, the proposed algorithm can be efficiently implemented in near-term quantum computers with low measurement cost without suffering from the vanishing gradient (or barren plateau) issue. Using a qubit recycling strategy, only one ancilla qubit is required to represent all the hidden spins in an RBM architecture. The variational algorithm is extended to open quantum systems by employing a stochastic Schrodinger equation approach. Numerical simulations of spin-lattice models demonstrate that our algorithm is capable of capturing the dynamics of closed and open quantum many-body systems with high accuracy.

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