Compositional descriptor-based recommender system for the materials discovery

Structures and properties of many inorganic compounds have been collected historically. However, it only covers a very small portion of possible inorganic crystals, which implies the presence of numerous currently unknown compounds. A powerful machine-learning strategy is mandatory to discover new i...

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Veröffentlicht in:The Journal of chemical physics 2018-06, Vol.148 (24), p.241719-241719
Hauptverfasser: Seko, Atsuto, Hayashi, Hiroyuki, Tanaka, Isao
Format: Artikel
Sprache:eng
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Zusammenfassung:Structures and properties of many inorganic compounds have been collected historically. However, it only covers a very small portion of possible inorganic crystals, which implies the presence of numerous currently unknown compounds. A powerful machine-learning strategy is mandatory to discover new inorganic compounds from all chemical combinations. Herein we propose a descriptor-based recommender-system approach to estimate the relevance of chemical compositions where crystals can be formed [i.e., chemically relevant compositions (CRCs)]. In addition to data-driven compositional similarity used in the literature, the use of compositional descriptors as a prior knowledge is helpful for the discovery of new compounds. We validate our recommender systems in two ways. First, one database is used to construct a model, while another is used for the validation. Second, we estimate the phase stability for compounds at expected CRCs using density functional theory calculations.
ISSN:0021-9606
1089-7690
DOI:10.1063/1.5016210