TL;DR
This paper introduces a committee neural network approach for interatomic potentials that improves accuracy, estimates errors, and enables active learning to efficiently develop robust models with minimal ab initio calculations.
Contribution
It adapts committee models to neural network potentials, using disagreement to guide active learning and control generalization error during simulations.
Findings
Achieved accurate water models across various phases and conditions.
Reduced ab initio calculations needed for training.
Demonstrated effective active learning for model development.
Abstract
It is well known in the field of machine learning that committee models improve accuracy, provide generalization error estimates, and enable active learning strategies. In this work, we adapt these concepts to interatomic potentials based on artificial neural networks. Instead of a single model, multiple models that share the same atomic environment descriptors yield an average that outperforms its individual members as well as a measure of the generalization error in the form of the committee disagreement. We not only use this disagreement to identify the most relevant configurations to build up the model's training set in an active learning procedure, but also monitor and bias it during simulations to control the generalization error. This facilitates the adaptive development of committee neural network potentials and their training sets, while keeping the number of ab initio…
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