logo

EbookBell.com

Most ebook files are in PDF format, so you can easily read them using various software such as Foxit Reader or directly on the Google Chrome browser.
Some ebook files are released by publishers in other formats such as .awz, .mobi, .epub, .fb2, etc. You may need to install specific software to read these formats on mobile/PC, such as Calibre.

Please read the tutorial at this link:  https://ebookbell.com/faq 


We offer FREE conversion to the popular formats you request; however, this may take some time. Therefore, right after payment, please email us, and we will try to provide the service as quickly as possible.


For some exceptional file formats or broken links (if any), please refrain from opening any disputes. Instead, email us first, and we will try to assist within a maximum of 6 hours.

EbookBell Team

Marble Interpretable Representations Of Neural Population Dynamics Using Geometric Deep Learning Adam Gosztolai Robert L Peach Alexis Arnaudon Mauricio Barahona Pierre Vandergheynst

  • SKU: BELL-238827916
Marble Interpretable Representations Of Neural Population Dynamics Using Geometric Deep Learning Adam Gosztolai Robert L Peach Alexis Arnaudon Mauricio Barahona Pierre Vandergheynst
$ 35.00 $ 45.00 (-22%)

5.0

68 reviews

Marble Interpretable Representations Of Neural Population Dynamics Using Geometric Deep Learning Adam Gosztolai Robert L Peach Alexis Arnaudon Mauricio Barahona Pierre Vandergheynst instant download after payment.

Publisher: x
File Extension: PDF
File size: 23.5 MB
Author: Adam Gosztolai & Robert L. Peach & Alexis Arnaudon & Mauricio Barahona & Pierre Vandergheynst
Language: English
Year: 2025

Product desciption

Marble Interpretable Representations Of Neural Population Dynamics Using Geometric Deep Learning Adam Gosztolai Robert L Peach Alexis Arnaudon Mauricio Barahona Pierre Vandergheynst by Adam Gosztolai & Robert L. Peach & Alexis Arnaudon & Mauricio Barahona & Pierre Vandergheynst instant download after payment.

Nature Methods, doi:10.1038/s41592-024-02582-2

The dynamics of neuron populations commonly evolve on low-dimensional manifolds. Thus, we need methods that learn the dynamical processes over neural manifolds to infer interpretable and consistent latent representations. We introduce a representation learning method, MARBLE, which decomposes on-manifold dynamics into local fow felds and maps them into a common latent space using unsupervised geometric deep learning. In simulated nonlinear dynamical systems, recurrent neural networks and experimental single-neuron recordings from primates and rodents, we discover emergent low-dimensional latent representations that parametrize high-dimensional neural dynamics during gain modulation, decision-making and changes in the internal state. These representations are consistent across neural networks and animals, enabling the robust comparison of cognitive computations. Extensive benchmarking demonstrates state-of-the-art within- and across-animal decoding accuracy of MARBLE compared to current representation learning approaches, with minimal user input. Our results suggest that a manifold structure provides a powerful inductive bias to develop decoding algorithms and assimilate data across experiments.