Skip to content

Learnable latent embeddings for joint behavioral and neural analysis - Official implementation of CEBRA

License

Notifications You must be signed in to change notification settings

AdaptiveMotorControlLab/CEBRA

Folders and files

NameName
Last commit message
Last commit date

Latest commit

4901966 · Mar 15, 2025
Mar 4, 2025
Mar 4, 2025
Nov 8, 2024
Mar 15, 2025
Feb 2, 2025
Jul 26, 2024
Feb 3, 2025
May 1, 2023
Oct 6, 2023
Oct 2, 2023
Oct 20, 2024
Jul 12, 2023
Mar 15, 2025
Jul 12, 2023
Jul 12, 2023
Jul 12, 2023
May 30, 2024
Feb 3, 2025
Jan 1, 2024
May 1, 2023
Feb 2, 2025
Jan 1, 2024
Feb 3, 2025
Jan 3, 2024
Jul 12, 2023
Feb 3, 2025
Feb 3, 2025
Mar 15, 2025

Repository files navigation

Welcome! 👋

CEBRA is a library for estimating Consistent EmBeddings of high-dimensional Recordings using Auxiliary variables. It contains self-supervised learning algorithms implemented in PyTorch, and has support for a variety of different datasets common in biology and neuroscience.

To receive updates on code releases, please 👀 watch or ⭐️ star this repository!

cebra is a self-supervised method for non-linear clustering that allows for label-informed time series analysis. It can jointly use behavioral and neural data in a hypothesis- or discovery-driven manner to produce consistent, high-performance latent spaces. While it is not specific to neural and behavioral data, this is the first domain we used the tool in. This application case is to obtain a consistent representation of latent variables driving activity and behavior, improving decoding accuracy of behavioral variables over standard supervised learning, and obtaining embeddings which are robust to domain shifts.

Reference

License

  • Since version 0.4.0, CEBRA is open source software under an Apache 2.0 license.
  • Prior versions 0.1.0 to 0.3.1 were released for academic use only (please read the license file).

About

Learnable latent embeddings for joint behavioral and neural analysis - Official implementation of CEBRA

Topics

Resources

License

Code of conduct

Citation

Stars

Watchers

Forks

Packages

No packages published

Languages