IMEX-Reg: Implicit-Explicit Regularization in the Function Space for Continual Learning

Abstract

Continual learning (CL) remains one of the long-standing challenges for deep neural networks due to catastrophic forgetting of previously acquired knowledge. Although rehearsal-based approaches have been fairly successful in mitigating catastrophic forgetting, they suffer from overfitting on buffered samples and prior information loss, hindering generalization under low-buffer regimes. Inspired by how humans learn using strong inductive biases, we propose \textbf{IMEX-Reg} to improve the generalization performance of experience rehearsal in CL under low buffer regimes. Specifically, we employ a two-pronged implicit-explicit regularization approach using contrastive representation learning (CRL) and consistency regularization. To further leverage the global relationship between representations learned using CRL, we propose a regularization strategy to guide the classifier toward the activation correlations in the unit hypersphere of the CRL. Our results show that IMEX-Reg significantly improves generalization performance and outperforms rehearsal-based approaches in several CL scenarios. It is also robust to natural and adversarial corruptions with less task-recency bias. Additionally, we provide theoretical insights to support our design decisions further.

Cite

Text

Bhat et al. "IMEX-Reg: Implicit-Explicit Regularization in the Function Space for Continual Learning." Transactions on Machine Learning Research, 2024.

Markdown

[Bhat et al. "IMEX-Reg: Implicit-Explicit Regularization in the Function Space for Continual Learning." Transactions on Machine Learning Research, 2024.](https://mlanthology.org/tmlr/2024/bhat2024tmlr-imexreg/)

BibTeX

@article{bhat2024tmlr-imexreg,
  title     = {{IMEX-Reg: Implicit-Explicit Regularization in the Function Space for Continual Learning}},
  author    = {Bhat, Prashant Shivaram and Renjith, Bharath Chennamkulam and Arani, Elahe and Zonooz, Bahram},
  journal   = {Transactions on Machine Learning Research},
  year      = {2024},
  url       = {https://mlanthology.org/tmlr/2024/bhat2024tmlr-imexreg/}
}