Voting Data-Driven Regression Learning for Discovery of Functional Materials and Applications to Two-Dimensional Ferroelectric Materials
Xing-Yu Ma, Hou-Yi Lyu, Xue-Juan Dong, Zhen Zhang, Kuan-Rong Hao,, Qing-Bo Yan, Gang Su

TL;DR
This paper introduces a voting data-driven regression method that enhances the prediction accuracy of material properties, particularly ferroelectricity in two-dimensional compounds, even with limited data, enabling efficient discovery of functional materials.
Contribution
A novel voting data-driven regression approach that improves predictive performance and reduces data requirements for discovering functional materials, demonstrated on 2D ferroelectric compounds.
Findings
Improved prediction accuracy for electric polarization.
Identification of 38 stable ferroelectric materials.
Insights into atomic factors affecting polarization.
Abstract
Regression machine learning is widely applied to predict various materials. However, insufficient materials data usually leads to a poor performance. Here, we develop a new voting data-driven method that could generally improve the performance of regression learning model for accurately predicting properties of materials. We apply it to investigate a large family (2135) of two-dimensional hexagonal binary compounds focusing on ferroelectric properties and find that the performance of the model for electric polarization is indeed greatly improved, where 38 stable ferroelectrics with out-of-plane polarization including 31 metals and 7 semiconductors are screened out. By an unsupervised learning, actionable information such as how the number and orbital radius of valence electrons, ionic polarizability, and electronegativity of constituent atoms affect polarization was extracted. Our…
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