Weakly nonlinear response of noisy neurons
Author(s) -
Sergej O. Voronenko,
Benjamin Lindner
Publication year - 2017
Publication title -
new journal of physics
Language(s) - English
Resource type - Journals
ISSN - 1367-2630
DOI - 10.1088/1367-2630/aa5b81
Subject(s) - physics , nonlinear system , harmonics , trigonometric functions , statistical physics , robustness (evolution) , amplitude , biological neuron model , signal (programming language) , control theory (sociology) , mathematical analysis , artificial neural network , voltage , quantum mechanics , mathematics , computer science , artificial intelligence , biochemistry , chemistry , geometry , control (management) , gene , programming language
We calculate the instantaneous firing rate of a stochastic integrate-and-fire neuron driven by an arbitrary time-dependent signal up to second order in the signal amplitude. For cosine signals this weakly nonlinear theory reveals: i) a frequency-dependent change of the time-averaged firing rate reminiscent of frequency locking in deterministic oscillators; ii) higher harmonics in the rate that may exceed the linear response; iii) a strong nonlinear response to two cosines even when the response to a single cosine is linear. We also measure the second-order response numerically for a neuron model with excitable voltage dynamics and channel noise and find a strong similarity to the second-order response that we obtain analytically for the leaky integrate-and-fire model. Finally, we illustrate how the transition of neural dynamics from the linear rate response regime to a mode locking regime is captured by the second-order response. Our results highlight the importance and robustness of the weakly nonlinear regime in neural dynamics.
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