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Autores principales: Zhang, Junpeng, Cheng, Lei, Zhang, Guoxi, Cai, Hua, Xu, Qing, Zhang, Quanshi
Formato: Preprint
Publicado: 2026
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Acceso en línea:https://arxiv.org/abs/2605.17967
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author Zhang, Junpeng
Cheng, Lei
Zhang, Guoxi
Cai, Hua
Xu, Qing
Zhang, Quanshi
author_facet Zhang, Junpeng
Cheng, Lei
Zhang, Guoxi
Cai, Hua
Xu, Qing
Zhang, Quanshi
contents This paper explores a scientific question in supervised fine-tuning (SFT): why SFT is broadly effective for small-scale deep neural networks, yet can produce inconsistent or even detrimental effects when applied to large language models (LLMs). Recent advances in interaction-based explanations suggest that interactions between words/tokens provide a faithful metric for quantifying the inference patterns encoded by LLMs. We find that the evolution of interactions during SFT can effectively explain the inconsistent effectiveness of SFT for LLMs. Specifically, we find that (1) SFT primarily removes noise-like interactions, while rarely acquiring reliable new interactions. (2) This denoising stage is extremely brief, after which continued fine-tuning tends to introduce overfitted interactions. We validate these findings across multiple LLMs and datasets. Our findings provide new insights into early stopping and offer practical guidance for LLM training.
format Preprint
id arxiv_https___arxiv_org_abs_2605_17967
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Reconciling Contradictory Views on the Effectiveness of SFT in LLMs: An Interaction Perspective
Zhang, Junpeng
Cheng, Lei
Zhang, Guoxi
Cai, Hua
Xu, Qing
Zhang, Quanshi
Artificial Intelligence
This paper explores a scientific question in supervised fine-tuning (SFT): why SFT is broadly effective for small-scale deep neural networks, yet can produce inconsistent or even detrimental effects when applied to large language models (LLMs). Recent advances in interaction-based explanations suggest that interactions between words/tokens provide a faithful metric for quantifying the inference patterns encoded by LLMs. We find that the evolution of interactions during SFT can effectively explain the inconsistent effectiveness of SFT for LLMs. Specifically, we find that (1) SFT primarily removes noise-like interactions, while rarely acquiring reliable new interactions. (2) This denoising stage is extremely brief, after which continued fine-tuning tends to introduce overfitted interactions. We validate these findings across multiple LLMs and datasets. Our findings provide new insights into early stopping and offer practical guidance for LLM training.
title Reconciling Contradictory Views on the Effectiveness of SFT in LLMs: An Interaction Perspective
topic Artificial Intelligence
url https://arxiv.org/abs/2605.17967