A regression-based feature selection study of the Curie temperature of transition-metal rare-earth compounds: prediction and understanding
Abstract
The Curie temperature (TC) of binary alloy compounds consisting of 3d transition-metal and 4f rare-earth elements is analyzed by a machine learning technique. We first demonstrate that nonlinear regression can accurately reproduce TC of the compounds. The prediction accuracy for TC is maximized when five to ten descriptors are selected, with the rare-earth concentration being the most relevant. We then discuss an attempt to utilize a regression-based model selection technique to learn the relation between the descriptors and the actuation mechanism of the corresponding physical phenomenon, i.e., TC in the present case.
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