Three learning stages and accuracy–efficiency tradeoff of restricted Boltzmann machines

被引:0
|
作者
Lennart Dabelow
Masahito Ueda
机构
[1] RIKEN Center for Emergent Matter Science (CEMS),Department of Physics and Institute for Physics of Intelligence, Graduate School of Science
[2] The University of Tokyo,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Restricted Boltzmann Machines (RBMs) offer a versatile architecture for unsupervised machine learning that can in principle approximate any target probability distribution with arbitrary accuracy. However, the RBM model is usually not directly accessible due to its computational complexity, and Markov-chain sampling is invoked to analyze the learned probability distribution. For training and eventual applications, it is thus desirable to have a sampler that is both accurate and efficient. We highlight that these two goals generally compete with each other and cannot be achieved simultaneously. More specifically, we identify and quantitatively characterize three regimes of RBM learning: independent learning, where the accuracy improves without losing efficiency; correlation learning, where higher accuracy entails lower efficiency; and degradation, where both accuracy and efficiency no longer improve or even deteriorate. These findings are based on numerical experiments and heuristic arguments.
引用
收藏
相关论文
共 50 条
  • [21] Analysis on Noisy Boltzmann Machines and Noisy Restricted Boltzmann Machines
    Lu, Wenhao
    Leung, Chi-Sing
    Sum, John
    IEEE ACCESS, 2021, 9 : 112955 - 112965
  • [22] Relational Restricted Boltzmann Machines: A Probabilistic Logic Learning Approach
    Kaur, Navdeep
    Kunapuli, Gautam
    Khot, Tushar
    Kersting, Kristian
    Cohen, William
    Natarajan, Sriraam
    INDUCTIVE LOGIC PROGRAMMING (ILP 2017), 2018, 10759 : 94 - 111
  • [23] Improved Learning of Gaussian-Bernoulli Restricted Boltzmann Machines
    Cho, KyungHyun
    Ilin, Alexander
    Raiko, Tapani
    ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2011, PT I, 2011, 6791 : 10 - 17
  • [24] Non-parametric learning of lifted Restricted Boltzmann Machines
    Kaur, Navdeep
    Kunapuli, Gautam
    Natarajan, Sriraam
    INTERNATIONAL JOURNAL OF APPROXIMATE REASONING, 2020, 120 : 33 - 47
  • [25] Mode-assisted unsupervised learning of restricted Boltzmann machines
    Manukian, Haik
    Pei, Yan Ru
    Bearden, Sean R. B.
    Di Ventra, Massimiliano
    COMMUNICATIONS PHYSICS, 2020, 3 (01)
  • [26] Mode-assisted unsupervised learning of restricted Boltzmann machines
    Haik Manukian
    Yan Ru Pei
    Sean R. B. Bearden
    Massimiliano Di Ventra
    Communications Physics, 3
  • [27] Convolutional restricted Boltzmann machines learning for robust visual tracking
    Lei, Jun
    Li, GuoHui
    Tu, Dan
    Guo, Qiang
    NEURAL COMPUTING & APPLICATIONS, 2014, 25 (06): : 1383 - 1391
  • [28] Learning Large Q-Matrix by Restricted Boltzmann Machines
    Chengcheng Li
    Chenchen Ma
    Gongjun Xu
    Psychometrika, 2022, 87 : 1010 - 1041
  • [29] Deterministic and Generalized Framework for Unsupervised Learning with Restricted Boltzmann Machines
    Tramel, Eric W.
    Gabrie, Marylou
    Manoel, Andre
    Caltagirone, Francesco
    Krzakala, Florent
    PHYSICAL REVIEW X, 2018, 8 (04):
  • [30] Efficient Learning of Restricted Boltzmann Machines Using Covariance Estimates
    Upadhya, Vidyadhar
    Sastry, P. S.
    ASIAN CONFERENCE ON MACHINE LEARNING, VOL 101, 2019, 101 : 851 - 866