Optimal pre-train/fine-tune strategies for accurate material property predictions
Reshma Devi, Keith T. Butler, Gopalakrishnan Sai Gautam

TL;DR
This paper systematically evaluates transfer learning strategies using graph neural networks to improve material property predictions with limited data, demonstrating significant performance gains and generalizability across diverse datasets.
Contribution
It introduces a comprehensive framework for pre-training and fine-tuning GNNs on multiple material properties, outperforming models trained from scratch and enabling better out-of-distribution predictions.
Findings
Pair-wise PT-FT models outperform from-scratch models.
Multi-property transfer learning (MPT) enhances generalization.
Framework is effective across diverse datasets and properties.
Abstract
Overcoming the challenge of limited data availability within materials science is crucial for the broad-based applicability of machine learning within materials science. One pathway to overcome this limited data availability is to use the framework of transfer learning (TL), where a pre-trained (PT) machine learning model (on a larger dataset) can be fine-tuned (FT) on a target (typically smaller) dataset. Our study systematically explores the effectiveness of various PT/FT strategies to learn and predict material properties with limited data. Specifically, we leverage graph neural networks (GNNs) to PT/FT on seven diverse curated materials datasets, encompassing sizes ranging from 941 to 132,752 datapoints. We consider datasets that cover a spectrum of material properties, ranging from band gaps (electronic) to formation energies (thermodynamic) and shear moduli (mechanical). We study…
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Taxonomy
TopicsManufacturing Process and Optimization · Industrial Vision Systems and Defect Detection · Machine Learning in Materials Science
