Waveflow: boundary-conditioned normalizing flows applied to fermionic wavefunctions
November 27, 2022 ยท Declared Dead ยท ๐ APL Machine Learning
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Authors
Luca Thiede, Chong Sun, Alรกn Aspuru-Guzik
arXiv ID
2211.14839
Category
cs.LG: Machine Learning
Cross-listed
physics.comp-ph
Citations
2
Venue
APL Machine Learning
Last Checked
4 months ago
Abstract
An efficient and expressive wavefunction ansatz is key to scalable solutions for complex many-body electronic structures. While Slater determinants are predominantly used for constructing antisymmetric electronic wavefunction ansรคtze, this construction can result in limited expressiveness when the targeted wavefunction is highly complex. In this work, we introduce Waveflow, an innovative framework for learning many-body fermionic wavefunctions using boundary-conditioned normalizing flows. Instead of relying on Slater determinants, Waveflow imposes antisymmetry by defining the fundamental domain of the wavefunction and applying necessary boundary conditions. A key challenge in using normalizing flows for this purpose is addressing the topological mismatch between the prior and target distributions. We propose using O-spline priors and I-spline bijections to handle this mismatch, which allows for flexibility in the node number of the distribution while automatically maintaining its square-normalization property. We apply Waveflow to a one-dimensional many-electron system, where we variationally minimize the system's energy using variational quantum Monte Carlo (VQMC). Our experiments demonstrate that Waveflow can effectively resolve topological mismatches and faithfully learn the ground-state wavefunction.
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