60
views
0
recommends
+1 Recommend
0 collections
    0
    shares
      • Record: found
      • Abstract: found
      • Article: found
      Is Open Access

      Accelerating materials property predictions using machine learning

      research-article

      Read this article at

      Bookmark
          There is no author summary for this article yet. Authors can add summaries to their articles on ScienceOpen to make them more accessible to a non-specialist audience.

          Abstract

          The materials discovery process can be significantly expedited and simplified if we can learn effectively from available knowledge and data. In the present contribution, we show that efficient and accurate prediction of a diverse set of properties of material systems is possible by employing machine (or statistical) learning methods trained on quantum mechanical computations in combination with the notions of chemical similarity. Using a family of one-dimensional chain systems, we present a general formalism that allows us to discover decision rules that establish a mapping between easily accessible attributes of a system and its properties. It is shown that fingerprints based on either chemo-structural (compositional and configurational information) or the electronic charge density distribution can be used to make ultra-fast, yet accurate, property predictions. Harnessing such learning paradigms extends recent efforts to systematically explore and mine vast chemical spaces, and can significantly accelerate the discovery of new application-specific materials.

          Related collections

          Most cited references11

          • Record: found
          • Abstract: not found
          • Article: not found

          Generalized Gradient Approximation Made Simple.

            Bookmark
            • Record: found
            • Abstract: found
            • Article: found
            Is Open Access

            Fast and Accurate Modeling of Molecular Atomization Energies with Machine Learning

            We introduce a machine learning model to predict atomization energies of a diverse set of organic molecules, based on nuclear charges and atomic positions only. The problem of solving the molecular Schr\"odinger equation is mapped onto a non-linear statistical regression problem of reduced complexity. Regression models are trained on and compared to atomization energies computed with hybrid density-functional theory. Cross-validation over more than seven thousand small organic molecules yields a mean absolute error of ~10 kcal/mol. Applicability is demonstrated for the prediction of molecular atomization potential energy curves.
              Bookmark
              • Record: found
              • Abstract: found
              • Article: not found

              Finding density functionals with machine learning.

              Machine learning is used to approximate density functionals. For the model problem of the kinetic energy of noninteracting fermions in 1D, mean absolute errors below 1 kcal/mol on test densities similar to the training set are reached with fewer than 100 training densities. A predictor identifies if a test density is within the interpolation region. Via principal component analysis, a projected functional derivative finds highly accurate self-consistent densities. The challenges for application of our method to real electronic structure problems are discussed.
                Bookmark

                Author and article information

                Journal
                Sci Rep
                Sci Rep
                Scientific Reports
                Nature Publishing Group
                2045-2322
                30 September 2013
                2013
                : 3
                : 2810
                Affiliations
                [1 ]Department of Materials Science and Engineering, University of Connecticut , 97 North Eagleville Road, Storrs, Connecticut 06269
                [2 ]Department of Statistics, University of Connecticut , 215 Glenbrook Road, Storrs, Connecticut 06269
                [3 ]Department of Computer Science and Engineering, University of Connecticut , 371 Fairfield Road, Storrs, Connecticut 06269
                Author notes
                Article
                srep02810
                10.1038/srep02810
                3786293
                24077117
                faf2ba7f-3d62-4af5-a60b-1b052f8e750f
                Copyright © 2013, Macmillan Publishers Limited. All rights reserved

                This work is licensed under a Creative Commons Attribution 3.0 Unported License. To view a copy of this license, visit http://creativecommons.org/licenses/by/3.0/

                History
                : 25 June 2013
                : 09 September 2013
                Categories
                Article

                Uncategorized
                Uncategorized

                Comments

                Comment on this article