cs.AI updates on arXiv.org 08月05日
Learning Dynamics of Meta-Learning in Small Model Pretraining
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研究通过将MAML与subset-masked LM预训练结合,在NLP任务中提升小语言模型的预训练效果和可解释性,实现更快收敛和提升F1分数。

arXiv:2508.02189v1 Announce Type: cross Abstract: Large language models are powerful but costly. We ask whether meta-learning can make the pretraining of small language models not only better but also more interpretable. We integrate first-order MAML with subset-masked LM pretraining, producing four LLama-style decoder-only models (11M-570M params), and evaluate it on a fundamental NLP task with many settings and real-world applications. Compared with vanilla training, our model (i) reaches the same loss up to 1.6x sooner, (ii) improves F1 on multilingual Universal NER under equal compute, and (iii) makes the training dynamics easy to read: first the network's representations fan out ("diversify") and later they collapse into a smaller, shared subspace ("compress"). This two-stage shift shows up as a rise-and-fall in both effective-rank curves and attention-head entropy. The same curves pinpoint which layers specialise earliest and which later reconverge, giving a compact, interpretable signature of meta-adaptation. Code, checkpoints and WandB logs are released.

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元学习 小语言模型 预训练 NLP任务 可解释性
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