Systems neuroscience March 28, 2023 EDT
ccby-4.0
Expressive architectures enhance interpretability of dynamics-based neural population models
Expressive architectures enhance interpretability of dynamics-based neural population models
q-bio.NC (Quantitative Biology - Neurons and Cognition)cs.LG (Computer Science - Learning)recurrent neural networksneural ordinary differential equationsdimensionality reductiondynamical systemsunsupervised learning
Sedler, Andrew R., Christopher Versteeg, and Chethan Pandarinath. 2023. “Expressive Architectures Enhance Interpretability of Dynamics-Based Neural Population Models.” Neurons, Behavior, Data Analysis, and Theory, March, 1–22. https://doi.org/10.51628/001c.73987.