Literature DB >> 35177607

Density of states prediction for materials discovery via contrastive learning from probabilistic embeddings.

Shufeng Kong1, Francesco Ricci2, Dan Guevarra3, Jeffrey B Neaton4,5,6, Carla P Gomes7, John M Gregoire8.   

Abstract

Machine learning for materials discovery has largely focused on predicting an individual scalar rather than multiple related properties, where spectral properties are an important example. Fundamental spectral properties include the phonon density of states (phDOS) and the electronic density of states (eDOS), which individually or collectively are the origins of a breadth of materials observables and functions. Building upon the success of graph attention networks for encoding crystalline materials, we introduce a probabilistic embedding generator specifically tailored to the prediction of spectral properties. Coupled with supervised contrastive learning, our materials-to-spectrum (Mat2Spec) model outperforms state-of-the-art methods for predicting ab initio phDOS and eDOS for crystalline materials. We demonstrate Mat2Spec's ability to identify eDOS gaps below the Fermi energy, validating predictions with ab initio calculations and thereby discovering candidate thermoelectrics and transparent conductors. Mat2Spec is an exemplar framework for predicting spectral properties of materials via strategically incorporated machine learning techniques.
© 2022. The Author(s).

Entities:  

Year:  2022        PMID: 35177607      PMCID: PMC8854636          DOI: 10.1038/s41467-022-28543-x

Source DB:  PubMed          Journal:  Nat Commun        ISSN: 2041-1723            Impact factor:   17.694


  18 in total

1.  Crystal Graph Convolutional Neural Networks for an Accurate and Interpretable Prediction of Material Properties.

Authors:  Tian Xie; Jeffrey C Grossman
Journal:  Phys Rev Lett       Date:  2018-04-06       Impact factor: 9.161

2.  Solar fuels photoanode materials discovery by integrating high-throughput theory and experiment.

Authors:  Qimin Yan; Jie Yu; Santosh K Suram; Lan Zhou; Aniketa Shinde; Paul F Newhouse; Wei Chen; Guo Li; Kristin A Persson; John M Gregoire; Jeffrey B Neaton
Journal:  Proc Natl Acad Sci U S A       Date:  2017-03-06       Impact factor: 11.205

3.  Prediction of seebeck coefficient for compounds without restriction to fixed stoichiometry: A machine learning approach.

Authors:  Al'ona Furmanchuk; James E Saal; Jeff W Doak; Gregory B Olson; Alok Choudhary; Ankit Agrawal
Journal:  J Comput Chem       Date:  2017-09-27       Impact factor: 3.376

4.  Universal fragment descriptors for predicting properties of inorganic crystals.

Authors:  Olexandr Isayev; Corey Oses; Cormac Toher; Eric Gossett; Stefano Curtarolo; Alexander Tropsha
Journal:  Nat Commun       Date:  2017-06-05       Impact factor: 14.919

5.  Structure motif-centric learning framework for inorganic crystalline systems.

Authors:  Huta R Banjade; Sandro Hauri; Shanshan Zhang; Francesco Ricci; Weiyi Gong; Geoffroy Hautier; Slobodan Vucetic; Qimin Yan
Journal:  Sci Adv       Date:  2021-04-21       Impact factor: 14.136

Review 6.  Machine learning for molecular and materials science.

Authors:  Keith T Butler; Daniel W Davies; Hugh Cartwright; Olexandr Isayev; Aron Walsh
Journal:  Nature       Date:  2018-07-25       Impact factor: 49.962

7.  A Statistical Learning Framework for Materials Science: Application to Elastic Moduli of k-nary Inorganic Polycrystalline Compounds.

Authors:  Maarten de Jong; Wei Chen; Randy Notestine; Kristin Persson; Gerbrand Ceder; Anubhav Jain; Mark Asta; Anthony Gamst
Journal:  Sci Rep       Date:  2016-10-03       Impact factor: 4.379

Review 8.  Progress and prospects for accelerating materials science with automated and autonomous workflows.

Authors:  Helge S Stein; John M Gregoire
Journal:  Chem Sci       Date:  2019-09-20       Impact factor: 9.825

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