Injecting Domain Knowledge from Empirical Interatomic Potentials to Neural Networks for Predicting Material Properties
Zeren Shui, Daniel S. Karls, Mingjian Wen, Ilia A. Nikiforov, Ellad B., Tadmor, George Karypis

TL;DR
This paper introduces two methods to incorporate domain knowledge from empirical interatomic potentials into neural network models, significantly enhancing their accuracy and generalizability in predicting material properties.
Contribution
It proposes two generic strategies, weakly supervised learning and transfer learning, to inject domain knowledge from empirical potentials into neural networks for material property prediction.
Findings
First strategy improves performance by 5% to 51%.
Second strategy improves performance by up to 55%.
Combining both strategies further boosts accuracy.
Abstract
For decades, atomistic modeling has played a crucial role in predicting the behavior of materials in numerous fields ranging from nanotechnology to drug discovery. The most accurate methods in this domain are rooted in first-principles quantum mechanical calculations such as density functional theory (DFT). Because these methods have remained computationally prohibitive, practitioners have traditionally focused on defining physically motivated closed-form expressions known as empirical interatomic potentials (EIPs) that approximately model the interactions between atoms in materials. In recent years, neural network (NN)-based potentials trained on quantum mechanical (DFT-labeled) data have emerged as a more accurate alternative to conventional EIPs. However, the generalizability of these models relies heavily on the amount of labeled training data, which is often still insufficient to…
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Code & Models
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Taxonomy
TopicsMachine Learning in Materials Science · Topic Modeling · Fuel Cells and Related Materials
MethodsAuxiliary Classifier
