Neurosymbolic Reasoning and Learning with Restricted Boltzmann Machines

被引:0
|
作者
Tran, Son N. [1 ]
Garcez, Artur d'Avila [2 ]
机构
[1] Univ Tasmania, Launceston, Tas 7248, Australia
[2] City Univ London, Northampton Sq, London EC1V 0HB, England
关键词
NEURAL-NETWORKS;
D O I
暂无
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Knowledge representation and reasoning in neural networks has been a long-standing endeavour which has attracted much attention recently. The principled integration of reasoning and learning in neural networks is a main objective of the area of neurosymbolic Artificial Intelligence. In this paper, a neurosymbolic system is introduced that can represent any propositional logic formula. A proof of equivalence is presented showing that energy minimization in restricted Boltzmann machines corresponds to logical reasoning. We demonstrate the application of our approach empirically on logical reasoning and learning from data and knowledge. Experimental results show that reasoning can be performed effectively for a class of logical formulae. Learning from data and knowledge is also evaluated in comparison with learning of logic programs using neural networks. The results show that our approach can improve on state-of-the-art neurosymbolic systems. The theorems and empirical results presented in this paper are expected to reignite the research on the use of neural networks as massively-parallel models for logical reasoning and promote the principled integration of reasoning and learning in deep networks.
引用
收藏
页码:6558 / 6565
页数:8
相关论文
共 50 条
  • [1] SCALABLE LEARNING FOR RESTRICTED BOLTZMANN MACHINES
    Barshan, Elnaz
    Fieguth, Paul
    2014 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2014, : 2754 - 2758
  • [2] Spectral dynamics of learning in restricted Boltzmann machines
    Decelle, A.
    Fissore, G.
    Furtlehner, C.
    EPL, 2017, 119 (06)
  • [3] Approximate Learning Algorithm for Restricted Boltzmann Machines
    Yasuda, Muneki
    Tanaka, Kazuyuki
    2008 INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE FOR MODELLING CONTROL & AUTOMATION, VOLS 1 AND 2, 2008, : 692 - 697
  • [4] An Incremental Learning Approach for Restricted Boltzmann Machines
    Yu, Jongmin
    Gwak, Jeonghwan
    Lee, Sejeong
    Jeon, Moongu
    FOURTH INTERNATIONAL CONFERENCE ON CONTROL, AUTOMATION AND INFORMATION SCIENCES (CCAIS 2015), 2015, : 113 - 117
  • [5] Thermodynamics of Restricted Boltzmann Machines and Related Learning Dynamics
    A. Decelle
    G. Fissore
    C. Furtlehner
    Journal of Statistical Physics, 2018, 172 : 1576 - 1608
  • [6] LEARNING SPAM FEATURES USING RESTRICTED BOLTZMANN MACHINES
    da Silva, Luis Alexandre
    Pontara da Costa, Kelton Augusto
    Ribeiro, Patricia Bellin
    de Rosa, Gustavo Henrique
    Papa, Joao Paulo
    IADIS-INTERNATIONAL JOURNAL ON COMPUTER SCIENCE AND INFORMATION SYSTEMS, 2016, 11 (01): : 99 - 114
  • [7] Learning restricted Boltzmann machines with pattern induced weights
    Gari, J.
    Romero, E.
    Mazzanti, F.
    NEUROCOMPUTING, 2024, 610
  • [8] Learning Restricted Boltzmann Machines via Influence Maximization
    Bresler, Guy
    Koehler, Frederic
    Moitra, Ankur
    PROCEEDINGS OF THE 51ST ANNUAL ACM SIGACT SYMPOSIUM ON THEORY OF COMPUTING (STOC '19), 2019, : 828 - 839
  • [9] Learning Restricted Boltzmann Machines with Sparse Latent Variables
    Bresler, Guy
    Buhai, Rares-Darius
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
  • [10] Thermodynamics of Restricted Boltzmann Machines and Related Learning Dynamics
    Decelle, A.
    Fissore, G.
    Furtlehner, C.
    JOURNAL OF STATISTICAL PHYSICS, 2018, 172 (06) : 1576 - 1608