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Discovering melting temperature prediction models of inorganic solids by combining supervised and unsupervised learning.
Gharakhanyan, Vahe; Wirth, Luke J; Garrido Torres, Jose A; Eisenberg, Ethan; Wang, Ting; Trinkle, Dallas R; Chatterjee, Snigdhansu; Urban, Alexander.
Affiliation
  • Gharakhanyan V; Department of Applied Physics and Applied Mathematics, Columbia University, New York, New York 10027, USA.
  • Wirth LJ; Columbia Electrochemical Energy Center, Columbia University, New York, New York 10027, USA.
  • Garrido Torres JA; Department of Materials Science and Engineering, University of Illinois Urbana-Champaign, Urbana, Illinois 61801, USA.
  • Eisenberg E; Department of Chemical Engineering, Columbia University, New York, New York 10027, USA.
  • Wang T; Department of Chemical Engineering, Columbia University, New York, New York 10027, USA.
  • Trinkle DR; Department of Chemical Engineering, Columbia University, New York, New York 10027, USA.
  • Chatterjee S; Department of Materials Science and Engineering, University of Illinois Urbana-Champaign, Urbana, Illinois 61801, USA.
  • Urban A; School of Statistics, University of Minnesota, Minneapolis, Minnesota 55455, USA.
J Chem Phys ; 160(20)2024 May 28.
Article in En | MEDLINE | ID: mdl-38804486
ABSTRACT
The melting temperature is important for materials design because of its relationship with thermal stability, synthesis, and processing conditions. Current empirical and computational melting point estimation techniques are limited in scope, computational feasibility, or interpretability. We report the development of a machine learning methodology for predicting melting temperatures of binary ionic solid materials. We evaluated different machine-learning models trained on a dataset of the melting points of 476 non-metallic crystalline binary compounds using materials embeddings constructed from elemental properties and density-functional theory calculations as model inputs. A direct supervised-learning approach yields a mean absolute error of around 180 K but suffers from low interpretability. We find that the fidelity of predictions can further be improved by introducing an additional unsupervised-learning step that first classifies the materials before the melting-point regression. Not only does this two-step model exhibit improved accuracy, but the approach also provides a level of interpretability with insights into feature importance and different types of melting that depend on the specific atomic bonding inside a material. Motivated by this finding, we used a symbolic learning approach to find interpretable physical models for the melting temperature, which recovered the best-performing features from both prior models and provided additional interpretability.

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Chem Phys Year: 2024 Document type: Article Affiliation country: Estados Unidos

Full text: 1 Collection: 01-internacional Database: MEDLINE Language: En Journal: J Chem Phys Year: 2024 Document type: Article Affiliation country: Estados Unidos