论文标题
投票数据驱动的回归学习,用于发现功能材料和应用二维铁电材料的应用
Voting Data-Driven Regression Learning for Discovery of Functional Materials and Applications to Two-Dimensional Ferroelectric Materials
论文作者
论文摘要
回归机器学习被广泛应用于预测各种材料。但是,材料数据不足通常会导致性能差。在这里,我们开发了一种新的投票数据驱动方法,该方法通常可以改善回归学习模型的性能,以准确预测材料的性能。我们将其应用于研究以铁电特性为重点的二维六边形二元化合物(2135),发现电动极化模型的性能确实得到了很大改善,其中有38个稳定的铁电极具有,其中38个稳定的平面极化,包括31金属和7个半径。通过无监督的学习,可操作的信息,例如价电子的数量和轨道半径,离子极化性和成分原子的电负性影响影响极化。我们的投票数据驱动的方法不仅减少了构建可靠学习模型的材料数据的大小,而且还可以对有针对性的功能材料做出精确的预测。
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 voting data-driven method not only reduces the size of materials data for constructing a reliable learning model but also enables to make precise predictions for targeted functional materials.