How Catastrophic Can Catastrophic Forgetting Be in Linear Regression?
Abstract
To better understand catastrophic forgetting, we study fitting an overparameterized linear model to a sequence of tasks with different input distributions. We analyze how much the model forgets the true labels of earlier tasks after training on subsequent tasks, obtaining exact expressions and bounds. We establish connections between continual learning in the linear setting and two other research areas – alternating projections and the Kaczmarz method. In specific settings, we highlight differences between forgetting and convergence to the offline solution as studied in those areas. In particular, when $T$ tasks in $d$ dimensions are presented cyclically for $k$ iterations, we prove an upper bound of $T^2\min\{1/\sqrt{k},d/k\}$ on the forgetting. This stands in contrast to the convergence to the offline solution, which can be arbitrarily slow according to existing alternating projection results. We further show that the $T^2$ factor can be lifted when tasks are presented in a random ordering.
Cite
Text
Evron et al. "How Catastrophic Can Catastrophic Forgetting Be in Linear Regression?." Conference on Learning Theory, 2022.Markdown
[Evron et al. "How Catastrophic Can Catastrophic Forgetting Be in Linear Regression?." Conference on Learning Theory, 2022.](https://mlanthology.org/colt/2022/evron2022colt-catastrophic/)BibTeX
@inproceedings{evron2022colt-catastrophic,
title = {{How Catastrophic Can Catastrophic Forgetting Be in Linear Regression?}},
author = {Evron, Itay and Moroshko, Edward and Ward, Rachel and Srebro, Nathan and Soudry, Daniel},
booktitle = {Conference on Learning Theory},
year = {2022},
pages = {4028-4079},
volume = {178},
url = {https://mlanthology.org/colt/2022/evron2022colt-catastrophic/}
}