作者
Kyungtae Lee, Mukil V Ayyasamy, Paige Delsa, Timothy Q Hartnett, Prasanna V Balachandran
发表日期
2022/2/2
期刊
npj Computational Materials
卷号
8
期号
1
页码范围
25
出版商
Nature Publishing Group UK
简介
There is intense interest in uncovering design rules that govern the formation of various structural phases as a function of chemical composition in multi-principal element alloys (MPEAs). In this paper, we develop a machine learning (ML) approach built on the foundations of ensemble learning, post hoc model interpretability of black-box models, and clustering analysis to establish a quantitative relationship between the chemical composition and experimentally observed phases of MPEAs. The originality of our work stems from performing instance-level (or local) variable attribution analysis of ML predictions based on the breakdown method, and then identifying similar instances based on k-means clustering analysis of the breakdown results. We also complement the breakdown analysis with Ceteris Paribus profiles that showcase how the model response changes as a function of a single variable, when the values …
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K Lee, MV Ayyasamy, P Delsa, TQ Hartnett… - npj Computational Materials, 2022