A State Space Approach for Piecewise-Linear Recurrent Neural Networks for Reconstructing Nonlinear Dynamics from Neural Measurements
Daniel Durstewitz

TL;DR
This paper introduces a semi-analytical maximum-likelihood estimation method for piecewise-linear recurrent neural networks, enabling the recovery of neural dynamics from experimental data and linking them to computational functions.
Contribution
It develops a novel estimation framework for PLRNNs within state space models, allowing for efficient inference of neural dynamics from noisy neural measurements.
Findings
Successfully applied to rodent neural data during a working memory task
Captured essential computational dynamics with a 5-state model
Revealed slow dynamics near bifurcation points in neural activity
Abstract
The computational properties of neural systems are often thought to be implemented in terms of their network dynamics. Hence, recovering the system dynamics from experimentally observed neuronal time series, like multiple single-unit (MSU) recordings or neuroimaging data, is an important step toward understanding its computations. Ideally, one would not only seek a state space representation of the dynamics, but would wish to have access to its governing equations for in-depth analysis. Recurrent neural networks (RNNs) are a computationally powerful and dynamically universal formal framework which has been extensively studied from both the computational and the dynamical systems perspective. Here we develop a semi-analytical maximum-likelihood estimation scheme for piecewise-linear RNNs (PLRNNs) within the statistical framework of state space models, which accounts for noise in both the…
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