Network of evolvable neural units can learn synaptic learning rules and spiking dynamics

被引:6
|
作者
Bertens, Paul [1 ]
Lee, Seong-Whan [1 ,2 ]
机构
[1] Korea Univ, Dept Brain & Cognit Engn, Seoul, South Korea
[2] Korea Univ, Dept Artificial Intelligence, Seoul, South Korea
关键词
T-MAZE; EVOLUTION; NEURONS; NEUROTRANSMITTER; SYNCHRONIZATION; NEUROEVOLUTION; PLASTICITY;
D O I
10.1038/s42256-020-00267-x
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Although deep neural networks have seen great success in recent years through various changes in overall architectures and optimization strategies, their fundamental underlying design remains largely unchanged. Computational neuroscience may provide more biologically realistic models of neural processing mechanisms, but they are still high-level abstractions of empirical behaviour. Here we propose an evolvable neural unit (ENU) that can evolve individual somatic and synaptic compartment models of neurons in a scalable manner. We demonstrate that ENUs can evolve to mimic integrate-and-fire neurons and synaptic spike-timing-dependent plasticity. Furthermore, by constructing a network where an ENU takes the place of each synapse and neuron, we evolve an agent capable of learning to solve a T-maze environment task. This network independently discovers spiking dynamics and reinforcement-type learning rules, opening up a new path towards biologically inspired artificial intelligence. Bertens and Lee propose an evolvable neural unit, a recurrent neural network-based module that can evolve individual somatic and synaptic compartment models of neurons. By constructing networks of these evolvable neural units, they can evolve agents that learn synaptic update rules and the spiking dynamics of neurons.
引用
收藏
页码:791 / 799
页数:19
相关论文
共 50 条
  • [1] Network of evolvable neural units can learn synaptic learning rules and spiking dynamics
    Paul Bertens
    Seong-Whan Lee
    [J]. Nature Machine Intelligence, 2020, 2 : 791 - 799
  • [2] Meta-SpikePropamine: learning to learn with synaptic plasticity in spiking neural networks
    Schmidgall, Samuel
    Hays, Joe
    [J]. FRONTIERS IN NEUROSCIENCE, 2023, 17
  • [3] Synaptic plasticity model of a spiking neural network for reinforcement learning
    Lee, Kyoobin
    Kwon, Dong-Soo
    [J]. NEUROCOMPUTING, 2008, 71 (13-15) : 3037 - 3043
  • [4] Learning the Synaptic and Intrinsic Membrane Dynamics Underlying Working Memory in Spiking Neural Network Models
    Li, Yinghao
    Kim, Robert
    Sejnowski, Terrence J.
    [J]. NEURAL COMPUTATION, 2021, 33 (12) : 3264 - 3287
  • [5] Local unsupervised learning rules for a spiking neural network with dendrite
    Olivier FL Manette
    [J]. BMC Neuroscience, 12 (Suppl 1)
  • [6] Effects of synaptic integration on the dynamics and computational performance of spiking neural network
    Xiumin Li
    Shengyuan Luo
    Fangzheng Xue
    [J]. Cognitive Neurodynamics, 2020, 14 : 347 - 357
  • [7] Effects of synaptic integration on the dynamics and computational performance of spiking neural network
    Li, Xiumin
    Luo, Shengyuan
    Xue, Fangzheng
    [J]. COGNITIVE NEURODYNAMICS, 2020, 14 (03) : 347 - 357
  • [8] Distributed synaptic weights in a LIF neural network and learning rules
    Perthame, Benoit
    Salort, Delphine
    Wainrib, Gilles
    [J]. PHYSICA D-NONLINEAR PHENOMENA, 2017, 353 : 20 - 30
  • [9] Spiking neural network with synaptic plasticity for recognition
    Li, Jing
    Liu, Bo
    Gao, Weixin
    Huang, Xiaoyan
    [J]. PROCEEDINGS OF 2018 IEEE 3RD ADVANCED INFORMATION TECHNOLOGY, ELECTRONIC AND AUTOMATION CONTROL CONFERENCE (IAEAC 2018), 2018, : 1728 - 1732
  • [10] Learning rules in spiking neural networks: A survey
    Yi, Zexiang
    Lian, Jing
    Liu, Qidong
    Zhu, Hegui
    Liang, Dong
    Liu, Jizhao
    [J]. NEUROCOMPUTING, 2023, 531 : 163 - 179