Thalamus: A Brain-Inspired Algorithm for Biologically-Plausible Continual Learning and Disentangled Representations
Abstract
Animals thrive in a constantly changing environment and leverage the temporal structure to learn well-factorized causal representations. In contrast, traditional neural networks suffer from forgetting in changing environments and many methods have been proposed to limit forgetting with different trade-offs. Inspired by the brain thalamocortical circuit, we introduce a simple algorithm that uses optimization at inference time to generate internal representations of the current task dynamically. The algorithm alternates between updating the model weights and a latent task embedding, allowing the agent to parse the stream of temporal experience into discrete events and organize learning about them. On a continual learning benchmark, it achieves competitive end average accuracy by mitigating forgetting, but importantly, the interaction between the weights dynamics and the latent dynamics organizes knowledge into flexible structures with a cognitive interface to control them. Tasks later in the sequence can be solved through knowledge transfer as they become reachable within the well-factorized latent space. The algorithm meets many of the desiderata of an ideal continually learning agent in open-ended environments, and its simplicity suggests fundamental computations in circuits with abundant feedback control loops such as the thalamocortical circuits in the brain
Cite
Text
Hummos. "Thalamus: A Brain-Inspired Algorithm for Biologically-Plausible Continual Learning and Disentangled Representations." International Conference on Learning Representations, 2023.Markdown
[Hummos. "Thalamus: A Brain-Inspired Algorithm for Biologically-Plausible Continual Learning and Disentangled Representations." International Conference on Learning Representations, 2023.](https://mlanthology.org/iclr/2023/hummos2023iclr-thalamus/)BibTeX
@inproceedings{hummos2023iclr-thalamus,
title = {{Thalamus: A Brain-Inspired Algorithm for Biologically-Plausible Continual Learning and Disentangled Representations}},
author = {Hummos, Ali},
booktitle = {International Conference on Learning Representations},
year = {2023},
url = {https://mlanthology.org/iclr/2023/hummos2023iclr-thalamus/}
}