MLLGNACHEM-PHJun 19, 2021

Rayleigh-Gauss-Newton optimization with enhanced sampling for variational Monte Carlo

arXiv:2106.10558v412 citations
Originality Incremental advance
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This work addresses optimization and sampling bottlenecks in variational Monte Carlo for quantum many-body systems, representing an incremental improvement with specific gains.

The authors tackled the challenge of efficiently training neural wavefunctions in variational Monte Carlo by introducing the Rayleigh-Gauss-Newton optimizer and parallel tempering for sampling, achieving high-accuracy ground-state energy estimates on large lattice models after only 200 updates.

Variational Monte Carlo (VMC) is an approach for computing ground-state wavefunctions that has recently become more powerful due to the introduction of neural network-based wavefunction parametrizations. However, efficiently training neural wavefunctions to converge to an energy minimum remains a difficult problem. In this work, we analyze optimization and sampling methods used in VMC and introduce alterations to improve their performance. First, based on theoretical convergence analysis in a noiseless setting, we motivate a new optimizer that we call the Rayleigh-Gauss-Newton method, which can improve upon gradient descent and natural gradient descent to achieve superlinear convergence at no more than twice the computational cost. Second, in order to realize this favorable comparison in the presence of stochastic noise, we analyze the effect of sampling error on VMC parameter updates and experimentally demonstrate that it can be reduced by the parallel tempering method. In particular, we demonstrate that RGN can be made robust to energy spikes that occur when the sampler moves between metastable regions of configuration space. Finally, putting theory into practice, we apply our enhanced optimization and sampling methods to the transverse-field Ising and XXZ models on large lattices, yielding ground-state energy estimates with remarkably high accuracy after just 200 parameter updates.

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