Machine Learning-Based Predictions of Power Factor for Half-Heusler Phases
Kaja Bilińska,
Maciej J. Winiarski
Abstract:A support vector regression model for predictions of the thermoelectric power factor of half-Heusler phases was implemented based on elemental features of ions. The training subset was composed of 53 hH phases with 18 valence electrons. The target values were calculated within the density functional theory and Boltzmann equation. The best predictors out of over 2000 combinations regarded for the p-type power factor at room temperature are: electronegativity, the first ionization energy, and the valence electro… Show more
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