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A Statistical Learning Framework for Materials Science: Application to Elastic Moduli of k-nary Inorganic Polycrystalline Compounds

机译:材料科学的统计学习框架:在k元无机多晶化合物的弹性模量中的应用

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摘要

Materials scientists increasingly employ machine or statistical learning (SL) techniques to accelerate materials discovery and design. Such pursuits benefit from pooling training data across, and thus being able to generalize predictions over, k-nary compounds of diverse chemistries and structures. This work presents a SL framework that addresses challenges in materials science applications, where datasets are diverse but of modest size, and extreme values are often of interest. Our advances include the application of power or Hölder means to construct descriptors that generalize over chemistry and crystal structure, and the incorporation of multivariate local regression within a gradient boosting framework. The approach is demonstrated by developing SL models to predict bulk and shear moduli (K and G, respectively) for polycrystalline inorganic compounds, using 1,940 compounds from a growing database of calculated elastic moduli for metals, semiconductors and insulators. The usefulness of the models is illustrated by screening for superhard materials.
机译:材料科学家越来越多地采用机器或统计学习(SL)技术来加速材料发现和设计。这些追求得益于将训练数据汇总到不同化学和结构的k元化合物中,从而能够对这些化合物进行预测。这项工作提出了一个SL框架,该框架解决了材料科学应用程序中的挑战,在该应用程序中,数据集是多种多样的,但是大小适中,并且经常会关注极值。我们的进步包括应用幂或Hölder手段构建描述化学和晶体结构的描述子,以及在梯度增强框架中纳入多元局部回归。通过使用SL模型来预测多晶无机化合物的体积模量和剪切模量(分别为K和G),并利用来自不断增长的金属,半导体和绝缘体计算弹性模量数据库中的1,940种化合物,证明了该方法的有效性。通过筛选超硬材料可以说明模型的实用性。

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