Semi-supervised teacher-student deep neural network for materials discovery
Daniel Gleaves, Edirisuriya M. Dilanga Siriwardane, Yong Zhao, Nihang, Fu, Jianjun Hu

TL;DR
This paper introduces a semi-supervised teacher-student deep neural network that leverages unlabeled data to improve the prediction of formation energy and synthesizability, aiding large-scale materials discovery.
Contribution
It presents a novel semi-supervised deep neural network architecture that effectively utilizes unlabeled data for materials property prediction, outperforming existing models.
Findings
10.3% accuracy improvement in formation energy prediction
97.9% true positive rate in synthesizability prediction
512 stable structures identified out of 1000 candidates
Abstract
Data driven generative machine learning models have recently emerged as one of the most promising approaches for new materials discovery. While the generator models can generate millions of candidates, it is critical to train fast and accurate machine learning models to filter out stable, synthesizable materials with desired properties. However, such efforts to build supervised regression or classification screening models have been severely hindered by the lack of unstable or unsynthesizable samples, which usually are not collected and deposited in materials databases such as ICSD and Materials Project (MP). At the same time, there are a significant amount of unlabelled data available in these databases. Here we propose a semi-supervised deep neural network (TSDNN) model for high-performance formation energy and synthesizability prediction, which is achieved via its unique…
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Taxonomy
TopicsMachine Learning in Materials Science · X-ray Diffraction in Crystallography · Electron and X-Ray Spectroscopy Techniques
