Generative Modeling of Neural Dynamics via Latent Stochastic Differential Equations
- URL: http://arxiv.org/abs/2412.12112v1
- Date: Sun, 01 Dec 2024 09:36:03 GMT
- Title: Generative Modeling of Neural Dynamics via Latent Stochastic Differential Equations
- Authors: Ahmed ElGazzar, Marcel van Gerven,
- Abstract summary: We propose a framework for developing computational models of biological neural systems.
We employ a system of coupled differential equations with differentiable drift and diffusion functions.
We show that these hybrid models achieve competitive performance in predicting stimulus-evoked neural and behavioral responses.
- Score: 1.5467259918426441
- License:
- Abstract: We propose a probabilistic framework for developing computational models of biological neural systems. In this framework, physiological recordings are viewed as discrete-time partial observations of an underlying continuous-time stochastic dynamical system which implements computations through its state evolution. To model this dynamical system, we employ a system of coupled stochastic differential equations with differentiable drift and diffusion functions and use variational inference to infer its states and parameters. This formulation enables seamless integration of existing mathematical models in the literature, neural networks, or a hybrid of both to learn and compare different models. We demonstrate this in our framework by developing a generative model that combines coupled oscillators with neural networks to capture latent population dynamics from single-cell recordings. Evaluation across three neuroscience datasets spanning different species, brain regions, and behavioral tasks show that these hybrid models achieve competitive performance in predicting stimulus-evoked neural and behavioral responses compared to sophisticated black-box approaches while requiring an order of magnitude fewer parameters, providing uncertainty estimates, and offering a natural language for interpretation.
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