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Application of machine-learning methods to solid-state chemistry: ferromagnetism in transition metal alloys

机译:机器学习方法在固态化学中的应用:过渡金属合金中的铁磁性

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摘要

Machine-learning methods are a collection of techniques for building predictive models from experimental data. The algorithms are problem-independent: the chemistry and physics of the problem being studied are contained in the descriptors used to represent the known data. The application of a variety of machine-learning methods to the prediction of ferromagnetism in ordered and disordered transition metal alloys is presented. Applying a decision tree algorithm to build a predictive model for ordered phases results in a model that is 100% accurate. The same algorithm achieves 99% accuracy when trained on a data set containing both ordered and disordered phases. Details of the descriptor sets for both applications are also presented. (C) 2003 Elsevier Inc. All rights reserved. [References: 36]
机译:机器学习方法是从实验数据构建预测模型的技术的集合。这些算法与问题无关:要研究的问题的化学性质和物理性质包含在用于表示已知数据的描述符中。提出了多种机器学习方法在有序和无序过渡金属合金中铁磁性预测中的应用。应用决策树算法为有序阶段建立预测模型可得出100%准确的模型。在包含有序和无序相位的数据集上进行训练时,同一算法可达到99%的精度。还介绍了两个应用程序的描述符集的详细信息。 (C)2003 Elsevier Inc.保留所有权利。 [参考:36]

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