Compositional descriptor-based recommender system accelerating the materials discovery
Abstract
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 stable crystals can be formed [i.e., chemically relevant compositions (CRCs)]. As well as data-driven compositional similarity used in the literature, the use of compositional descriptors as a prior knowledge can accelerate the discovery of new compounds. We validate our recommender systems in two ways. Firstly, one database is used to construct a model, while another is used for the validation. Secondly, we estimate the phase stability for compounds at expected CRCs using density functional theory calculations.
Cite
@article{arxiv.1711.06387,
title = {Compositional descriptor-based recommender system accelerating the materials discovery},
author = {Atsuto Seko and Hiroyuki Hayashi and Isao Tanaka},
journal= {arXiv preprint arXiv:1711.06387},
year = {2018}
}
Comments
8 pages, 7 figures