posted on 2024-06-14, 17:34authored byDong Zhu, Zhikuang Xin, Siming Zheng, Yangang Wang, Xiaoyu Yang
Deep learning has catalyzed a transformative shift in
material
discovery, offering a key advantage over traditional experimental
and theoretical methods by significantly reducing associated costs.
Models adept at predicting properties from chemical compositions alone
do not require structural information. However, this cost-efficient
approach compromises model precision, particularly in Chemical Composition-based
Property Prediction Models (CPMs), which are notably less accurate
than Structure-based Property Prediction Models (SPMs). Addressing
this challenge, our study introduces a novel Teacher-Student (TS)
strategy, where a pretrained SPM serves as an instructive ‘teacher’
to enhance the CPM’s precision. This TS strategy successfully
harmonizes low-cost exploration with high accuracy, achieving a significant
47.1% reduction in relative error in scenarios involving 100 data
entries. We also evaluate the effectiveness of the proposed strategy
by employing perovskites as a case study. This method represents a
significant advancement in the exploration and identification of valuable
materials, leveraging CPM’s potential while overcoming its
precision limitations.