2023
DOI: 10.48550/arxiv.2301.10203
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Neuronal architecture extracts statistical temporal patterns

Abstract: Neuronal systems need to process temporal signals. We here show how higher-order temporal (co-)fluctuations can be employed to represent and process information. Concretely, we demonstrate that a simple biologically inspired feedforward neuronal model is able to extract information from up to the third order cumulant to perform time series classification. This model relies on a weighted linear summation of synaptic inputs followed by a nonlinear gain function. Training both -the synaptic weights and the nonlin… Show more

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