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arxiv: 1010.3063 · v3 · pith:JUAJJ5E7new · submitted 2010-10-15 · 🧬 q-bio.NC · physics.bio-ph

Phase-Oscillator Computations as Neural Models of Stimulus-Response Conditioning and Response Selection

classification 🧬 q-bio.NC physics.bio-ph
keywords kuramotomodelsthreeanalysisbehavioraldataexperimentslearning
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The activity of collections of synchronizing neurons can be represented by weakly coupled nonlinear phase oscillators satisfying Kuramoto's equations. In this article, we build such neural-oscillator models, partly based on neurophysiological evidence, to represent approximately the learning behavior predicted and confirmed in three experiments by well-known stochastic learning models of behavioral stimulus-response theory. We use three Kuramoto oscillators to model a continuum of responses, and we provide detailed numerical simulations and analysis of the three-oscillator Kuramoto problem, including an analysis of the stability points for different coupling conditions. We show that the oscillator simulation data are well-matched to the behavioral data of the three experiments.

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