Information-Theoretic Intrinsic Plasticity for Online Unsupervised Learning in Spiking Neural Networks

被引:15
|
作者
Zhang, Wenrui [1 ]
Li, Peng [1 ]
机构
[1] Texas A&M Univ, Dept Elect & Comp Engn, College Stn, TX 77843 USA
来源
FRONTIERS IN NEUROSCIENCE | 2019年 / 13卷
基金
美国国家科学基金会;
关键词
intrinsic plasticity; spiking neural networks; unsupervised learning; liquid state machine; speech recognition; image classification; NEURONS; PREDICTION; MEMORY; MODEL;
D O I
10.3389/fnins.2019.00031
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
As a self-adaptive mechanism, intrinsic plasticity (IP) plays an essential role in maintaining homeostasis and shaping the dynamics of neural circuits. From a computational point of view, IP has the potential to enable promising non-Hebbian learning in artificial neural networks. While IP based learning has been attempted for spiking neuron models, the existing IP rules are ad hoc in nature, and the practical success of their application has not been demonstrated particularly toward enabling real-life learning tasks. This work aims to address the theoretical and practical limitations of the existing works by proposing a new IP rule named SpiKL-IP. SpiKL-IP is developed based on a rigorous information-theoretic approach where the target of IP tuning is to maximize the entropy of the output firing rate distribution of each spiking neuron. This goal is achieved by tuning the output firing rate distribution toward a targeted optimal exponential distribution. Operating on a proposed firing-rate transfer function, SpiKL-IP adapts the intrinsic parameters of a spiking neuron while minimizing the KL-divergence from the targeted exponential distribution to the actual output firing rate distribution. SpiKL-IP can robustly operate in an online manner under complex inputs and network settings. Simulation studies demonstrate that the application of SpiKL-IP to individual neurons in isolation or as part of a larger spiking neural network robustly produces the desired exponential distribution. The evaluation of SpiKL-IP under real-world speech and image classification tasks shows that SpiKL-IP noticeably outperforms two existing IP rules and can significantly boost recognition accuracy by up to more than 16%.
引用
收藏
页数:14
相关论文
共 50 条
  • [31] Information-Theoretic Testing and Debugging of Fairness Defects in Deep Neural Networks
    Monjezi, Verya
    Trivedi, Ashutosh
    Tan, Gang
    Tizpaz-Niari, Saeid
    2023 IEEE/ACM 45TH INTERNATIONAL CONFERENCE ON SOFTWARE ENGINEERING, ICSE, 2023, : 1571 - 1582
  • [32] Specialization in Hierarchical Learning Systems A Unified Information-theoretic Approach for Supervised, Unsupervised and Reinforcement Learning
    Hihn, Heinke
    Braun, Daniel A.
    NEURAL PROCESSING LETTERS, 2020, 52 (03) : 2319 - 2352
  • [33] Specialization in Hierarchical Learning SystemsA Unified Information-theoretic Approach for Supervised, Unsupervised and Reinforcement Learning
    Heinke Hihn
    Daniel A. Braun
    Neural Processing Letters, 2020, 52 : 2319 - 2352
  • [34] Multisample Online Learning for Probabilistic Spiking Neural Networks
    Jang, Hyeryung
    Simeone, Osvaldo
    IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2022, 33 (05) : 2034 - 2044
  • [35] Fast learning without synaptic plasticity in spiking neural networks
    Subramoney, Anand
    Bellec, Guillaume
    Scherr, Franz
    Legenstein, Robert
    Maass, Wolfgang
    SCIENTIFIC REPORTS, 2024, 14 (01)
  • [36] Synergies between Intrinsic and Synaptic Plasticity Based on Information Theoretic Learning
    Li, Yuke
    Li, Chunguang
    PLOS ONE, 2013, 8 (05):
  • [37] Unsupervised Learning and Clustered Connectivity Enhance Reinforcement Learning in Spiking Neural Networks
    Weidel, Philipp
    Duarte, Renato
    Morrison, Abigail
    FRONTIERS IN COMPUTATIONAL NEUROSCIENCE, 2021, 15 (15)
  • [38] Reinforcement Learning with Information-Theoretic Actuation
    Catt, Elliot
    Hutter, Marcus
    Veness, Joel
    ARTIFICIAL GENERAL INTELLIGENCE, AGI 2022, 2023, 13539 : 188 - 198
  • [39] Unsupervised Belief Representation Learning with Information-Theoretic Variational Graph Auto-Encoders
    Li, Jinning
    Shao, Huajie
    Sun, Dachun
    Wang, Ruijie
    Yan, Yuchen
    Li, Jinyang
    Liu, Shengzhong
    Tong, Hanghang
    Abdelzaher, Tarek
    PROCEEDINGS OF THE 45TH INTERNATIONAL ACM SIGIR CONFERENCE ON RESEARCH AND DEVELOPMENT IN INFORMATION RETRIEVAL (SIGIR '22), 2022, : 1728 - 1738
  • [40] Information-theoretic analysis for transfer learning
    Wu, Xuetong
    Manton, Jonathan H.
    Aickelin, Uwe
    Zhu, Jingge
    2020 IEEE INTERNATIONAL SYMPOSIUM ON INFORMATION THEORY (ISIT), 2020, : 2819 - 2824