Expressive dynamics models with nonlinear injective readouts enable reliable recovery of latent features from neural activity
Christopher Versteeg, Andrew R. Sedler, Jonathan D. McCart, and, Chethan Pandarinath

TL;DR
This paper introduces ODIN, a nonlinear injective readout model that improves the interpretability and accuracy of latent dynamics models in neural activity analysis, enabling better recovery of underlying neural features.
Contribution
The paper proposes ODIN, a novel injective nonlinear readout for latent dynamics models, enhancing interpretability and recovery of neural system features from neural recordings.
Findings
ODIN accurately recovers nonlinear embedded systems from simulated neural data.
ODIN reconstructs neural activity with fewer latent dimensions than previous methods.
ODIN enables unsupervised identification of neural fixed points and embedding geometry.
Abstract
The advent of large-scale neural recordings has enabled new methods to discover the computational mechanisms of neural circuits by understanding the rules that govern how their state evolves over time. While these \textit{neural dynamics} cannot be directly measured, they can typically be approximated by low-dimensional models in a latent space. How these models represent the mapping from latent space to neural space can affect the interpretability of the latent representation. We show that typical choices for this mapping (e.g., linear or MLP) often lack the property of injectivity, meaning that changes in latent state are not obligated to affect activity in the neural space. During training, non-injective readouts incentivize the invention of dynamics that misrepresent the underlying system and the computation it performs. Combining our injective Flow readout with prior work on…
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Taxonomy
TopicsNeural dynamics and brain function · Neural Networks and Applications · Model Reduction and Neural Networks
