Title :
A network of coincidence detector neurons with periodic and chaotic dynamics
Author :
Watanabe, Masataka ; Aihara, Kazuyuki
Author_Institution :
Dept. of Quantum Eng. & Syst. Sci., Univ. of Tokyo, Japan
Abstract :
We propose a simple neural network model to understand the dynamics of temporal pulse coding. The model is composed of coincidence detector neurons with uniform synaptic efficacies and random pulse propagation delays. We also assume a global negative feedback mechanism which controls the network activity, leading to a fixed number of neurons firing within a certain time window. Due to this constraint, the network state becomes well defined and the dynamics equivalent to a piecewise nonlinear map. Numerical simulations of the model indicate that the latency of neuronal firing is crucial to the global network dynamics; when the timing of postsynaptic firing is less sensitive to perturbations in timing of presynaptic spikes, the network dynamics become stable and periodic, whereas increased sensitivity leads to instability and chaotic dynamics. Furthermore, we introduce a learning rule which decreases the Lyapunov exponent of an attractor and enlarges the basin of attraction.
Keywords :
Lyapunov methods; brain models; chaos; feedback; learning (artificial intelligence); neural nets; Lyapunov exponent; chaotic dynamics; coincidence detector neurons; global negative feedback mechanism; global network dynamics; learning rule; neural network model; neuronal firing latency; periodic dynamics; piecewise nonlinear map; postsynaptic firing; presynaptic spikes; random pulse propagation delays; temporal pulse coding; uniform synaptic efficacies; Biological neural networks; Chaos; Detectors; Mathematical model; Negative feedback; Neurons; Numerical simulation; Propagation delay; Pulse modulation; Timing; Action Potentials; Animals; Central Nervous System; Computer Simulation; Feedback; Humans; Learning; Models, Neurological; Nerve Net; Neurons; Nonlinear Dynamics; Reaction Time; Synapses; Synaptic Transmission;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2004.834797