Decomposed Linear Dynamical Systems (dLDS) for learning the latent components of neural dynamics
Noga Mudrik, Yenho Chen, Eva Yezerets, Christopher J. Rozell, and Adam, S. Charles

TL;DR
This paper introduces a decomposed linear dynamical systems model that learns interpretable, sparse, and non-stationary components of neural dynamics, improving understanding of complex brain activity.
Contribution
It proposes a novel sparse decomposition approach for modeling complex neural dynamics as a combination of simpler components, enhancing interpretability and efficiency.
Findings
Accurately approximates complex dynamical systems
Captures smooth transitions between modes
Demonstrates effectiveness on neural data from C. elegans
Abstract
Learning interpretable representations of neural dynamics at a population level is a crucial first step to understanding how observed neural activity relates to perception and behavior. Models of neural dynamics often focus on either low-dimensional projections of neural activity, or on learning dynamical systems that explicitly relate to the neural state over time. We discuss how these two approaches are interrelated by considering dynamical systems as representative of flows on a low-dimensional manifold. Building on this concept, we propose a new decomposed dynamical system model that represents complex non-stationary and nonlinear dynamics of time series data as a sparse combination of simpler, more interpretable components. Our model is trained through a dictionary learning procedure, where we leverage recent results in tracking sparse vectors over time. The decomposed nature of…
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Taxonomy
TopicsBat Biology and Ecology Studies · Neurobiology and Insect Physiology Research · Neural dynamics and brain function
