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Machine learning-based prediction of phases in high-entropy alloys: A data article

机译:基于机器学习的高熵合金阶段的预测:数据文章

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A systematic framework for choosing the most determinant combination of predictor features and solving the multiclass phase classification problem associated with high-entropy alloy (HEA) was recently proposed . The data associated with that research paper, titled “Machine learning-based prediction of phases in high-entropy alloys”, is presented in this data article. This dataset is a systematic documentation and comprehensive survey of experimentally reported HEA microstructures. It contains microstructural phase experimental observations and metallurgy-specific features as introduced and reported in peer-reviewed research articles. The dataset is provided with this article as a supplementary file. Since the dataset was collected from experimental peer-reviewed articles, these data can provide insights into the microstructural characteristics of HEAs, can be used to improve the optimization HEA phases, and have an important role in machine learning, material informatics, as well as in other fields.
机译:最近提出了一种选择用于选择最多确定的预测器特征组合和解决与高熵合金(Hea)相关的多种子相分类问题的系统框架。在本数据文章中,提出了与该研究论文相关的数据,标题为“基于高熵合金中的电机学习的阶段的阶段的预测”。该数据集是对实验报告的HEA微观结构的系统文档和全面调查。它含有微观结构相位实验观察和冶金特定特征,如在同行评审的研究文章中引入和报告。数据集随本文提供作为补充文件。由于数据集从实验同行评审的文章中收集,这些数据可以提供对HEA的微观结构特征的见解,可以用于改善优化HEA阶段,并在机器学习,材料信息学中具有重要作用,以及其他领域。

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