中国物理B ›› 2021, Vol. 30 ›› Issue (4): 40202-040202.doi: 10.1088/1674-1056/abd160

所属专题: SPECIAL TOPIC — Machine learning in statistical physics

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Aurélien Decelle1,2,(), Cyril Furtlehner2   

  • 收稿日期:2020-09-30 出版日期:2021-03-16 发布日期:2021-04-02

Restricted Boltzmann machine: Recent advances and mean-field theory

Aurélien Decelle1,2,?(), Cyril Furtlehner2   

  1. 1Departamento de Física Téorica I, Universidad Complutense, 28040 Madrid, Spain
    1TAU team INRIA Saclay & LISN Université Paris Saclay, Orsay 91405, France
  • Received:2020-09-30 Online:2021-03-16 Published:2021-04-02
  • Supported by:
    *AD was supported by the Comunidad de Madrid and the Complutense University of Madrid (Spain) through the Atracción de Talento program (Ref. 2019-T1/TIC-13298).

Abstract:

This review deals with restricted Boltzmann machine (RBM) under the light of statistical physics. The RBM is a classical family of machine learning (ML) models which played a central role in the development of deep learning. Viewing it as a spin glass model and exhibiting various links with other models of statistical physics, we gather recent results dealing with mean-field theory in this context. First the functioning of the RBM can be analyzed via the phase diagrams obtained for various statistical ensembles of RBM, leading in particular to identify a compositional phase where a small number of features or modes are combined to form complex patterns. Then we discuss recent works either able to devise mean-field based learning algorithms; either able to reproduce generic aspects of the learning process from some ensemble dynamics equations or/and from linear stability arguments.

Key words: restricted Boltzmann machine (RBM), machine learning, statistical physics