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Main Authors: Musielewicz, Joseph, Lan, Janice, Uyttendaele, Matt, Kitchin, John R.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.10844
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author Musielewicz, Joseph
Lan, Janice
Uyttendaele, Matt
Kitchin, John R.
author_facet Musielewicz, Joseph
Lan, Janice
Uyttendaele, Matt
Kitchin, John R.
contents Graph neural networks (GNNs) have been shown to be astonishingly capable models for molecular property prediction, particularly as surrogates for expensive density functional theory calculations of relaxed energy for novel material discovery. However, one limitation of GNNs in this context is the lack of useful uncertainty prediction methods, as this is critical to the material discovery pipeline. In this work, we show that uncertainty quantification for relaxed energy calculations is more complex than uncertainty quantification for other kinds of molecular property prediction, due to the effect that structure optimizations have on the error distribution. We propose that distribution-free techniques are more useful tools for assessing calibration, recalibrating, and developing uncertainty prediction methods for GNNs performing relaxed energy calculations. We also develop a relaxed energy task for evaluating uncertainty methods for equivariant GNNs, based on distribution-free recalibration and using the Open Catalyst Project dataset. We benchmark a set of popular uncertainty prediction methods on this task, and show that latent distance methods, with our novel improvements, are the most well-calibrated and economical approach for relaxed energy calculations. Finally, we demonstrate that our latent space distance method produces results which align with our expectations on a clustering example, and on specific equation of state and adsorbate coverage examples from outside the training dataset.
format Preprint
id arxiv_https___arxiv_org_abs_2407_10844
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Improved Uncertainty Estimation of Graph Neural Network Potentials Using Engineered Latent Space Distances
Musielewicz, Joseph
Lan, Janice
Uyttendaele, Matt
Kitchin, John R.
Machine Learning
Materials Science
Graph neural networks (GNNs) have been shown to be astonishingly capable models for molecular property prediction, particularly as surrogates for expensive density functional theory calculations of relaxed energy for novel material discovery. However, one limitation of GNNs in this context is the lack of useful uncertainty prediction methods, as this is critical to the material discovery pipeline. In this work, we show that uncertainty quantification for relaxed energy calculations is more complex than uncertainty quantification for other kinds of molecular property prediction, due to the effect that structure optimizations have on the error distribution. We propose that distribution-free techniques are more useful tools for assessing calibration, recalibrating, and developing uncertainty prediction methods for GNNs performing relaxed energy calculations. We also develop a relaxed energy task for evaluating uncertainty methods for equivariant GNNs, based on distribution-free recalibration and using the Open Catalyst Project dataset. We benchmark a set of popular uncertainty prediction methods on this task, and show that latent distance methods, with our novel improvements, are the most well-calibrated and economical approach for relaxed energy calculations. Finally, we demonstrate that our latent space distance method produces results which align with our expectations on a clustering example, and on specific equation of state and adsorbate coverage examples from outside the training dataset.
title Improved Uncertainty Estimation of Graph Neural Network Potentials Using Engineered Latent Space Distances
topic Machine Learning
Materials Science
url https://arxiv.org/abs/2407.10844