English

Self-Distillation Enables Continual Learning

Machine Learning 2026-01-28 v1

Abstract

Continual learning, enabling models to acquire new skills and knowledge without degrading existing capabilities, remains a fundamental challenge for foundation models. While on-policy reinforcement learning can reduce forgetting, it requires explicit reward functions that are often unavailable. Learning from expert demonstrations, the primary alternative, is dominated by supervised fine-tuning (SFT), which is inherently off-policy. We introduce Self-Distillation Fine-Tuning (SDFT), a simple method that enables on-policy learning directly from demonstrations. SDFT leverages in-context learning by using a demonstration-conditioned model as its own teacher, generating on-policy training signals that preserve prior capabilities while acquiring new skills. Across skill learning and knowledge acquisition tasks, SDFT consistently outperforms SFT, achieving higher new-task accuracy while substantially reducing catastrophic forgetting. In sequential learning experiments, SDFT enables a single model to accumulate multiple skills over time without performance regression, establishing on-policy distillation as a practical path to continual learning from demonstrations.

Keywords

Cite

@article{arxiv.2601.19897,
  title  = {Self-Distillation Enables Continual Learning},
  author = {Idan Shenfeld and Mehul Damani and Jonas Hübotter and Pulkit Agrawal},
  journal= {arXiv preprint arXiv:2601.19897},
  year   = {2026}
}
R2 v1 2026-07-01T09:22:43.852Z