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IDENTIFYING DISTINCT STOCHASTIC DYNAMICS FROM CHAOS: A STUDY ON MULTIMODAL NEURAL FIRING PATTERNS

Journal

INTERNATIONAL JOURNAL OF BIFURCATION AND CHAOS
Volume 19, Issue 2, Pages 453-485

Publisher

WORLD SCIENTIFIC PUBL CO PTE LTD
DOI: 10.1142/S0218127409023135

Keywords

Chaos; stochastic dynamics; neural firing; bifurcation multimodal characteristics; nonlinear prediction

Funding

  1. National High Technology Research and Development Program of China [2007AA02Z310]
  2. NSFC [10772101, 10432010, 30300107, 30270432]

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Some chaotic and a series of stochastic neural firings are multimodal. Stochastic multimodal. ring patterns are of special importance because they indicate a possible utility of noise. A number of previous studies confused the dynamics of chaotic and stochastic multimodal firing patterns. The confusion resulted partly from inappropriate interpretations of estimations of nonlinear time series measures. With deliberately chosen examples the present paper introduces strategies and methods of identification of stochastic. ring patterns from chaotic ones. Aided by theoretical simulation we show that the stochastic multimodal. ring patterns result from the effects of noise on neuronal systems near to a bifurcation between two simpler attractors, such as a point attractor and a limit cycle attractor or two limit cycle attractors. In contrast, the multimodal chaotic. ring trains are generated by the dynamics of a specific strange attractor. Three systems were carefully chosen to elucidate these two mechanisms. An experimental neural pacemaker model and the Chay mathematical model were used to show the stochastic dynamics, while the deterministic Wang model was used to show the deterministic dynamics. The usage and interpretation of nonlinear time series measures were systematically tested by applying them to. ring trains generated by the three systems. We successfully identified the distinct differences between stochastic and chaotic multimodal. ring patterns and showed the dynamics underlying two categories of stochastic. ring patterns. The first category results from the effects of noise on the neuronal system near a Hopf bifurcation. The second category results from the effects of noise on the period-adding bifurcation between two limit cycles. Although direct application of nonlinear measures to interspike interval series of these. ring trains misleadingly implies chaotic properties, definition of eigen events based on more appropriate judgments of the underlying dynamics leads to accurate identifications of the stochastic properties.

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