论文标题
合奏学习揭示了稀土过渡金属二元合金相对于居里温度的差异
Ensemble learning reveals dissimilarity between rare-earth transition metal binary alloys with respect to the Curie temperature
论文作者
论文摘要
我们提出了一种数据驱动的方法,以相对于给定的目标物理特性提取材料之间的差异。该技术基于一种以内核脊回归为预测模型的集合方法。进行材料的多个随机子集采样以生成预测模型和参考培训材料的相应贡献。每种材料的预测值的分布可以通过高斯混合模型近似。参考培训材料有助于预测模型,该模型准确预测特定材料的物理性质价值,被认为与该材料相似,反之亦然。使用合成数据的评估表明,所提出的方法可以有效地衡量数据实例之间的差异。分析方法在二进制3D过渡金属4F稀土二进制合金的库里温度(TC)数据上的应用也揭示了对材料之间关系的有意义的结果。所提出的方法可以被视为一种潜在的工具,以更深入地了解数据结构,尤其是目标属性。
We propose a data-driven method to extract dissimilarity between materials, with respect to a given target physical property. The technique is based on an ensemble method with Kernel ridge regression as the predicting model; multiple random subset sampling of the materials is done to generate prediction models and the corresponding contributions of the reference training materials in detail. The distribution of the predicted values for each material can be approximated by a Gaussian mixture model. The reference training materials contributed to the prediction model that accurately predicts the physical property value of a specific material, are considered to be similar to that material, or vice versa. Evaluations using synthesized data demonstrate that the proposed method can effectively measure the dissimilarity between data instances. An application of the analysis method on the data of Curie temperature (TC) of binary 3d transition metal 4f rare earth binary alloys also reveals meaningful results on the relations between the materials. The proposed method can be considered as a potential tool for obtaining a deeper understanding of the structure of data, with respect to a target property, in particular.