Optimizing Free Energy Estimation with Machine Learning
ORAL
Abstract
Free energy perturbation [1] is a bedrock technique for estimation of free energy differences. Fast, reliable convergence of the free energy difference, however, demands that the respective distributions share a large overlap in configuration space. One strategy to address this requirement is Targeted Free Energy Perturbation (TFEP) [2], whereby a bijective mapping on configuration space is used to increase an effective overlap. Despite its appeal, TFEP has seen little use in practice since it relies on handcrafting effective mappings. Here we turn TFEP into a machine learning problem whereby the mapping is represented by a deep neural network whose parameters are optimized so as to maximize overlap. We test the approach on a prototypical solvation system, employing a novel normalizing flow architecture that respects periodic boundary conditions and permutational symmetry of identical particles. Our technique leads to significant error reduction in free energy estimates compared to baselines, without requiring additional data.
[1] R. W. Zwanzig, J. Chem. Phys. 22, 1420 (1954)
[2] C. Jarzynski, Phys. Rev. E 65, 046122 (2002)
*PW and AJB contributed equally to this work.
This research has been first published in J. Chem. Phys. 153, 144112 (2020), with the permission of AIP Publishing.
[1] R. W. Zwanzig, J. Chem. Phys. 22, 1420 (1954)
[2] C. Jarzynski, Phys. Rev. E 65, 046122 (2002)
*PW and AJB contributed equally to this work.
This research has been first published in J. Chem. Phys. 153, 144112 (2020), with the permission of AIP Publishing.
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Presenters
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Andrew Ballard
Deepmind Technologies Ltd
Authors
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Peter Wirnsberger
Deepmind Technologies Ltd
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Andrew Ballard
Deepmind Technologies Ltd
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George Papamakarios
Deepmind Technologies Ltd
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Stuart Abercrombie
Deepmind Technologies Ltd
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Sébastien Racanière
Deepmind Technologies Ltd
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Alexander Pritzel
Deepmind Technologies Ltd
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Danilo Jimenez Rezende
Deepmind Technologies Ltd
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Charles Blundell
Deepmind Technologies Ltd