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Scaling Laws for Forgetting during Finetuning with Pretraining Data Injection

  • Louis Bethune
  • , David Grangier
  • , Dan Busbridge
  • , Eleonora Gualdoni
  • , Marco Cuturi
  • , Pierre Ablin
  • Apple Computer

Research output: Contribution to journalConference articlepeer-review

Abstract

A widespread strategy to obtain a language model that performs well on a target domain is to fine-tune a pretrained model to perform unsupervised next-token prediction on data from that target domain. Finetuning presents two challenges: (i) if the amount of target data is limited, as in most practical applications, the model will quickly over-fit, and (ii) the model will drift away from the original model, forgetting the pretraining data and the generic knowledge that comes with it. Our goal is to derive scaling laws that quantify these two phenomena for various target domains, amounts of available target data, and model scales. We measure the efficiency of injecting pretraining data into the finetuning data mixture to avoid forgetting and mitigate overfitting. A key practical takeaway from our study is that injecting as little as 1% of pretraining data in the finetuning data mixture prevents the model from forgetting the pretraining set.

Original languageEnglish
Pages (from-to)4020-4042
Number of pages23
JournalProceedings of Machine Learning Research
Volume267
Publication statusPublished - 1 Jan 2025
Externally publishedYes
Event42nd International Conference on Machine Learning, ICML 2025 - Vancouver, Canada
Duration: 13 Jul 202519 Jul 2025

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