Literature DB >> 28330348

Learning molecular energies using localized graph kernels.

Grégoire Ferré1, Terry Haut2, Kipton Barros3.   

Abstract

Recent machine learning methods make it possible to model potential energy of atomic configurations with chemical-level accuracy (as calculated from ab initio calculations) and at speeds suitable for molecular dynamics simulation. Best performance is achieved when the known physical constraints are encoded in the machine learning models. For example, the atomic energy is invariant under global translations and rotations; it is also invariant to permutations of same-species atoms. Although simple to state, these symmetries are complicated to encode into machine learning algorithms. In this paper, we present a machine learning approach based on graph theory that naturally incorporates translation, rotation, and permutation symmetries. Specifically, we use a random walk graph kernel to measure the similarity of two adjacency matrices, each of which represents a local atomic environment. This Graph Approximated Energy (GRAPE) approach is flexible and admits many possible extensions. We benchmark a simple version of GRAPE by predicting atomization energies on a standard dataset of organic molecules.

Entities:  

Year:  2017        PMID: 28330348     DOI: 10.1063/1.4978623

Source DB:  PubMed          Journal:  J Chem Phys        ISSN: 0021-9606            Impact factor:   3.488


  7 in total

Review 1.  Machine Learning Force Fields and Coarse-Grained Variables in Molecular Dynamics: Application to Materials and Biological Systems.

Authors:  Paraskevi Gkeka; Gabriel Stoltz; Amir Barati Farimani; Zineb Belkacemi; Michele Ceriotti; John D Chodera; Aaron R Dinner; Andrew L Ferguson; Jean-Bernard Maillet; Hervé Minoux; Christine Peter; Fabio Pietrucci; Ana Silveira; Alexandre Tkatchenko; Zofia Trstanova; Rafal Wiewiora; Tony Lelièvre
Journal:  J Chem Theory Comput       Date:  2020-07-16       Impact factor: 6.006

2.  Spherical harmonics based descriptor for neural network potentials: Structure and dynamics of Au147 nanocluster.

Authors:  Shweta Jindal; Siva Chiriki; Satya S Bulusu
Journal:  J Chem Phys       Date:  2017-05-28       Impact factor: 3.488

3.  Predicting Molecular Energy Using Force-Field Optimized Geometries and Atomic Vector Representations Learned from an Improved Deep Tensor Neural Network.

Authors:  Jianing Lu; Cheng Wang; Yingkai Zhang
Journal:  J Chem Theory Comput       Date:  2019-06-12       Impact factor: 6.006

4.  Machine learning for the structure-energy-property landscapes of molecular crystals.

Authors:  Félix Musil; Sandip De; Jack Yang; Joshua E Campbell; Graeme M Day; Michele Ceriotti
Journal:  Chem Sci       Date:  2017-12-12       Impact factor: 9.825

5.  Dataset Construction to Explore Chemical Space with 3D Geometry and Deep Learning.

Authors:  Jianing Lu; Song Xia; Jieyu Lu; Yingkai Zhang
Journal:  J Chem Inf Model       Date:  2021-03-08       Impact factor: 4.956

6.  Applying machine learning techniques to predict the properties of energetic materials.

Authors:  Daniel C Elton; Zois Boukouvalas; Mark S Butrico; Mark D Fuge; Peter W Chung
Journal:  Sci Rep       Date:  2018-06-13       Impact factor: 4.379

7.  Towards exact molecular dynamics simulations with machine-learned force fields.

Authors:  Stefan Chmiela; Huziel E Sauceda; Klaus-Robert Müller; Alexandre Tkatchenko
Journal:  Nat Commun       Date:  2018-09-24       Impact factor: 14.919

  7 in total

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