Achieving Upper Bound Accuracy of Joint Training in Continual Learning
Journal:
arXiv
Published Date:
Feb 17, 2025
Abstract
Continual learning has been an active research area in machine learning,
focusing on incrementally learning a sequence of tasks. A key challenge is
catastrophic forgetting (CF), and most research efforts have been directed
toward mitigating this issue. However, a significant gap remains between the
accuracy achieved by state-of-the-art continual learning algorithms and the
ideal or upper-bound accuracy achieved by training all tasks together jointly.
This gap has hindered or even prevented the adoption of continual learning in
applications, as accuracy is often of paramount importance. Recently, another
challenge, termed inter-task class separation (ICS), was also identified, which
spurred a theoretical study into principled approaches for solving continual
learning. Further research has shown that by leveraging the theory and the
power of large foundation models, it is now possible to achieve upper-bound
accuracy, which has been empirically validated using both text and image
classification datasets. Continual learning is now ready for real-life
applications. This paper surveys the main research leading to this achievement,
justifies the approach both intuitively and from neuroscience research, and
discusses insights gained.