Insights into one-body density matrices using deep learning

被引:3
|
作者
Wetherell, Jack [1 ,2 ]
Costamagna, Andrea [2 ,3 ,4 ,5 ]
Gatti, Matteo [1 ,2 ,3 ]
Reining, Lucia [1 ,2 ]
机构
[1] Ecole Polytech, CNRS, Inst Polytech Paris, CEA,DRF,IRAMIS,Lab Solides Irradies, F-91128 Palaiseau, France
[2] European Theoret Spect Facil ETSF, Palaiseau, France
[3] Synchrotron SOLEIL, BP 48, F-91192 Gif Sur Yvette, France
[4] Politecn Torino, I-10129 Turin, Italy
[5] Univ Paris Saclay, F-91405 Orsay, France
关键词
ELECTRON; FUNCTIONALS; METRICS;
D O I
10.1039/d0fd00061b
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
The one-body reduced density matrix (1-RDM) of a many-body system at zero temperature gives direct access to many observables, such as the charge density, kinetic energy and occupation numbers. It would be desirable to express it as a simple functional of the density or of other local observables, but to date satisfactory approximations have not yet been found. Deep learning is the state of the art approach to performing high dimensional regressions and classification tasks, and is becoming widely used in the condensed matter community to develop increasingly accurate density functionals. Autoencoders are deep learning models that perform efficient dimensionality reduction, allowing the distillation of data to the fundamental features needed to represent it. By training autoencoders on a large data-set of 1-RDMs from exactly solvable real-space model systems, and performing principal component analysis, the machine learns to what extent the data can be compressed and hence how it is constrained. We gain insight into these machine learned constraints and employ them to inform approximations to the 1-RDM as a functional of the charge density. We exploit known physical properties of the 1-RDM in the simplest possible cases to perform feature engineering, where we inform the structure of the models from known mathematical relations, allowing us to integrate existing understanding into the machine learning methods. By comparing various deep learning approaches we gain insight into what physical features of the density matrix are most amenable to machine learning, utilising both known and learned characteristics.
引用
收藏
页码:265 / 291
页数:27
相关论文
共 50 条
  • [1] υ-representability of one-body density matrices
    Van Neck, D.
    Waroquier, M.
    Peirs, K.
    Van Speybroeck, V.
    Dewulf, Y.
    Physical Review A. Atomic, Molecular, and Optical Physics, 2001, 64 (04): : 425121 - 425123
  • [2] v-representability of one-body density matrices
    Van Neck, D
    Waroquier, M
    Peirs, K
    Van Speybroeck, V
    Dewulf, Y
    PHYSICAL REVIEW A, 2001, 64 (04) : 3
  • [3] The one-body and two-body density matrices of finite nuclei and center-of-mass correlations
    Shebeko, A.
    Papakonstantinou, P.
    Mavrommatis, E.
    FRONTIERS IN NUCLEAR STRUCTURE ASTROPHYSICS, AND REACTIONS: FINUSTAR, 2006, 831 : 75 - +
  • [4] ON THE INFORMATION-CONTENT OF THE ONE-BODY DENSITY
    FELDMEIER, H
    LECTURE NOTES IN PHYSICS, 1982, 171 : 384 - 392
  • [5] One-body density matrix in semiclassical approximation
    Soubbotin, VB
    Vinas, X
    IZVESTIYA AKADEMII NAUK SERIYA FIZICHESKAYA, 2001, 65 (01): : 92 - 97
  • [6] The one-body and two-body density matrices of finite nuclei with an appropriate treatment of the center-of-mass motion
    Shebeko, A
    Papakonstantinou, P
    Mavrommatis, E
    EUROPEAN PHYSICAL JOURNAL A, 2006, 27 (02): : 143 - 155
  • [7] THE ONE-BODY DENSITY-MATRIX IN HELIUM DROPLETS
    CHIN, SA
    JOURNAL OF LOW TEMPERATURE PHYSICS, 1993, 93 (5-6) : 921 - 934
  • [8] Eigenvalues of the one-body density matrix for correlated condensates
    Jensen, A. S.
    Kjaergaard, T.
    Thogersen, M.
    Fedorov, D. V.
    NUCLEAR PHYSICS A, 2007, 790 : 723C - 727C
  • [9] Correlated one-body density matrix of boson superfluids
    Pantforder, R
    Lindenau, T
    Ristig, ML
    JOURNAL OF LOW TEMPERATURE PHYSICS, 1997, 108 (3-4) : 245 - 266
  • [10] Correlated one-body density matrix of boson superfluids
    R. Pantförder
    T. Lindenau
    M. L. Ristig
    Journal of Low Temperature Physics, 1997, 108 : 245 - 266