2024
DOI: 10.1007/s43939-024-00073-x
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Learning from machine learning: the case of band-gap directness in semiconductors

Elton Ogoshi,
Mário Popolin-Neto,
Carlos Mera Acosta
et al.

Abstract: Having a direct or indirect band gap can influence the potential applications of a semiconductor, for indirect band gap materials are usually not suitable for optoelectronic devices. Even though this is a fundamental property of semiconducting materials, discussed in textbooks, no unified theory exists to explain why a material has a direct or indirect band gap. Here we used an interpretable machine learning model, the multiVariate dAta eXplanation (VAX) method, to gather information from a dataset of material… Show more

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