Literature DB >> 30465679

Feature optimization for atomistic machine learning yields a data-driven construction of the periodic table of the elements.

Michael J Willatt1, Félix Musil, Michele Ceriotti.   

Abstract

Machine-learning of atomic-scale properties amounts to extracting correlations between structure, composition and the quantity that one wants to predict. Representing the input structure in a way that best reflects such correlations makes it possible to improve the accuracy of the model for a given amount of reference data. When using a description of the structures that is transparent and well-principled, optimizing the representation might reveal insights into the chemistry of the data set. Here we show how one can generalize the SOAP kernel to introduce a distance-dependent weight that accounts for the multi-scale nature of the interactions, and a description of correlations between chemical species. We show that this improves substantially the performance of ML models of molecular and materials stability, while making it easier to work with complex, multi-component systems and to extend SOAP to coarse-grained intermolecular potentials. The element correlations that give the best performing model show striking similarities with the conventional periodic table of the elements, providing an inspiring example of how machine learning can rediscover, and generalize, intuitive concepts that constitute the foundations of chemistry.

Entities:  

Year:  2018        PMID: 30465679     DOI: 10.1039/c8cp05921g

Source DB:  PubMed          Journal:  Phys Chem Chem Phys        ISSN: 1463-9076            Impact factor:   3.676


  5 in total

1.  Gaussian Process Regression for Materials and Molecules.

Authors:  Volker L Deringer; Albert P Bartók; Noam Bernstein; David M Wilkins; Michele Ceriotti; Gábor Csányi
Journal:  Chem Rev       Date:  2021-08-16       Impact factor: 60.622

2.  On the relationship between spectroscopic constants of diatomic molecules: a machine learning approach.

Authors:  Xiangyue Liu; Gerard Meijer; Jesús Pérez-Ríos
Journal:  RSC Adv       Date:  2021-04-19       Impact factor: 3.361

3.  Dataset's chemical diversity limits the generalizability of machine learning predictions.

Authors:  Marta Glavatskikh; Jules Leguy; Gilles Hunault; Thomas Cauchy; Benoit Da Mota
Journal:  J Cheminform       Date:  2019-11-12       Impact factor: 5.514

4.  Visualization and Quantification of Geometric Diversity in Metal-Organic Frameworks.

Authors:  Thomas C Nicholas; Eugeny V Alexandrov; Vladislav A Blatov; Alexander P Shevchenko; Davide M Proserpio; Andrew L Goodwin; Volker L Deringer
Journal:  Chem Mater       Date:  2021-10-27       Impact factor: 10.508

5.  Combining Machine Learning and Computational Chemistry for Predictive Insights Into Chemical Systems.

Authors:  John A Keith; Valentin Vassilev-Galindo; Bingqing Cheng; Stefan Chmiela; Michael Gastegger; Klaus-Robert Müller; Alexandre Tkatchenko
Journal:  Chem Rev       Date:  2021-07-07       Impact factor: 60.622

  5 in total

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