CLAIOct 16, 2025

Continual Learning via Sparse Memory Finetuning

Meta AI
arXiv:2510.15103v114 citationsh-index: 28
Originality Incremental advance
AI Analysis

This addresses the problem of enabling large language models to learn new knowledge over time without forgetting, though it is incremental as it builds on existing memory layer models.

The paper tackled catastrophic forgetting in continual learning for language models by introducing sparse memory finetuning, which updates only highly activated memory slots, resulting in only an 11% drop in F1 on NaturalQuestions compared to 89% with full finetuning.

Modern language models are powerful, but typically static after deployment. A major obstacle to building models that continually learn over time is catastrophic forgetting, where updating on new data erases previously acquired capabilities. Motivated by the intuition that mitigating forgetting is challenging because trainable parameters are shared across all tasks, we investigate whether sparse parameter updates can enable learning without catastrophic forgetting. We introduce sparse memory finetuning, leveraging memory layer models (Berges et al., 2024), which are sparsely updated by design. By updating only the memory slots that are highly activated by a new piece of knowledge relative to usage on pretraining data, we reduce interference between new knowledge and the model's existing capabilities. We evaluate learning and forgetting compared to full finetuning and parameter-efficient finetuning with LoRA on two question answering tasks. We find that sparse memory finetuning learns new knowledge while exhibiting substantially less forgetting: while NaturalQuestions F1 drops by 89% after full finetuning on new facts and 71% with LoRA, sparse memory finetuning yields only an 11% drop with the same level of new knowledge acquisition. Our results suggest sparsity in memory layers offers a promising path toward continual learning in large language models.

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