Synthetic Modeling of Autonomous Learning with a Chaotic Neural Network

被引:4
|
作者
Funabashi, Masatoshi [1 ]
机构
[1] Sony Comp Sci Labs Inc, Shinagawa Ku, Tokyo 1410022, Japan
来源
关键词
Chaotic itinerancy; invariant subspace; blowout bifurcation; riddled basins; Hebbian and STDP learning; BLOWOUT BIFURCATIONS; COMPLEXITY; SYSTEMS; MAP;
D O I
10.1142/S0218127415500546
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
We investigate the possible role of intermittent chaotic dynamics called chaotic itinerancy, in interaction with nonsupervised learnings that reinforce and weaken the neural connection depending on the dynamics itself. We first performed hierarchical stability analysis of the Chaotic Neural Network model (CNN) according to the structure of invariant subspaces. Irregular transition between two attractor ruins with positive maximum Lyapunov exponent was triggered by the blowout bifurcation of the attractor spaces, and was associated with riddled basins structure. We secondly modeled two autonomous learnings, Hebbian learning and spike-timing-dependent plasticity (STDP) rule, and simulated the effect on the chaotic itinerancy state of CNN. Hebbian learning increased the residence time on attractor ruins, and produced novel attractors in the minimum higher-dimensional subspace. It also augmented the neuronal synchrony and established the uniform modularity in chaotic itinerancy. STDP rule reduced the residence time on attractor ruins, and brought a wide range of periodicity in emerged attractors, possibly including strange attractors. Both learning rules selectively destroyed and preserved the specific invariant subspaces, depending on the neuron synchrony of the subspace where the orbits are situated. Computational rationale of the autonomous learning is discussed in connectionist perspective.
引用
收藏
页数:25
相关论文
共 50 条
  • [41] A NEURAL NETWORK OF CHAOTIC OSCILLATORS
    INOUE, M
    FUKUSHIMA, S
    PROGRESS OF THEORETICAL PHYSICS, 1992, 87 (03): : 771 - 774
  • [42] Design of a Chaotic Neural Network by Using Chaotic Nodes and NDRAM Network
    Taherkhani, A.
    Mohammadi, A.
    Seyyedsalehi, S. A.
    Davande, H.
    2008 IEEE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOLS 1-8, 2008, : 3500 - 3504
  • [43] NEURAL LEARNING OF CHAOTIC DYNAMICS
    DECO, G
    SCHURMANN, B
    NEURAL PROCESSING LETTERS, 1995, 2 (02) : 23 - 26
  • [44] Neural-Network-Inspired Machine Learning for Autonomous Lunar Targeting
    Wilkinson, Matthew C.
    Meade, Andrew J., Jr.
    JOURNAL OF AEROSPACE INFORMATION SYSTEMS, 2014, 11 (07): : 458 - 466
  • [45] Modeling inaccurate perception:: Desynchronization issues of a Chaotic pattern recognition neural network
    Calitoiu, D
    Oommen, BJ
    Nusbaumm, D
    IMAGE ANALYSIS, PROCEEDINGS, 2005, 3540 : 821 - 830
  • [46] Reinforcement learning for hierarchical and modular neural network in autonomous robot navigation
    Calvo, R
    Figueiredo, M
    PROCEEDINGS OF THE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS 2003, VOLS 1-4, 2003, : 1340 - 1345
  • [47] Schematic modeling of the chaotic activation of muscle fiber by using recurrent neural network
    Nagayama, I
    Akamatsu, N
    PROGRESS IN CONNECTIONIST-BASED INFORMATION SYSTEMS, VOLS 1 AND 2, 1998, : 1342 - 1347
  • [48] Immune evolutionary algorithm and neural network for modeling and predicting chaotic time series
    Wen, Xiulan
    Zhu, Xiaochun
    Wang, Dongxia
    Sheng, Danghong
    2010 8TH WORLD CONGRESS ON INTELLIGENT CONTROL AND AUTOMATION (WCICA), 2010, : 3216 - 3219
  • [49] Nonlinear modeling of chaotic dynamics in a circulating fluidized bed by an artificial neural network
    Nakajima, Y
    Kikuchi, R
    Kuramoto, K
    Tsutsumi, A
    Otawara, K
    JOURNAL OF CHEMICAL ENGINEERING OF JAPAN, 2001, 34 (02) : 107 - 113
  • [50] Evolving Neural Network with Extreme Learning for System Modeling
    Rosa, Raul
    Gomide, Fernando
    Dovzan, Djan
    Skrjanc, Igor
    2014 IEEE CONFERENCE ON EVOLVING AND ADAPTIVE INTELLIGENT SYSTEMS (EAIS), 2014,