2023
DOI: 10.1101/2023.10.15.562381
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Bayesian nonparametric (non-)renewal processes for analyzing neural spike train variability

David Liu,
Máté Lengyel

Abstract: Neural spiking activity is generally variable, non-stationary, and exhibits complex dependencies on covariates, such as sensory input or behavior. These dependencies have been proposed to be signatures of specific computations, and so characterizing them with quantitative rigor is critical for understanding neural computations. Approaches based on point processes provide a principled statistical framework for modeling neural spiking activity. However, currently, they only allow the instantaneous mean, but not … Show more

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