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Main Authors: Cai, Jianfeng, Zhu, Jinhua, Sun, Ruopei, Wang, Yue, Li, Li, Zhou, Wengang, Li, Houqiang
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.00814
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author Cai, Jianfeng
Zhu, Jinhua
Sun, Ruopei
Wang, Yue
Li, Li
Zhou, Wengang
Li, Houqiang
author_facet Cai, Jianfeng
Zhu, Jinhua
Sun, Ruopei
Wang, Yue
Li, Li
Zhou, Wengang
Li, Houqiang
contents Reinforcement Learning from Human Feedback (RLHF) has achieved considerable success in aligning large language models (LLMs) by modeling human preferences with a learnable reward model and employing a reinforcement learning algorithm to maximize the reward model's scores. However, these reward models are susceptible to exploitation through various superficial confounding factors, with length bias emerging as a particularly significant concern. Moreover, while the pronounced impact of length bias on preference modeling suggests that LLMs possess an inherent sensitivity to length perception, our preliminary investigations reveal that fine-tuned LLMs consistently struggle to adhere to explicit length instructions. To address these two limitations, we propose a novel framework wherein the reward model explicitly differentiates between human semantic preferences and response length requirements. Specifically, we introduce a $\textbf{R}$esponse-$\textbf{c}$onditioned $\textbf{B}$radley-$\textbf{T}$erry (Rc-BT) model that enhances the model's capability in length bias mitigating and length instruction following, through training on our augmented dataset. Furthermore, we propose the Rc-RM and Rc-DPO algorithm to leverage the Rc-BT model for reward modeling and direct policy optimization (DPO) of LLMs, simultaneously mitigating length bias and promoting adherence to length instructions. Extensive experiments across various foundational models and datasets demonstrate the effectiveness and generalizability of our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2502_00814
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Disentangling Length Bias In Preference Learning Via Response-Conditioned Modeling
Cai, Jianfeng
Zhu, Jinhua
Sun, Ruopei
Wang, Yue
Li, Li
Zhou, Wengang
Li, Houqiang
Machine Learning
Computation and Language
Reinforcement Learning from Human Feedback (RLHF) has achieved considerable success in aligning large language models (LLMs) by modeling human preferences with a learnable reward model and employing a reinforcement learning algorithm to maximize the reward model's scores. However, these reward models are susceptible to exploitation through various superficial confounding factors, with length bias emerging as a particularly significant concern. Moreover, while the pronounced impact of length bias on preference modeling suggests that LLMs possess an inherent sensitivity to length perception, our preliminary investigations reveal that fine-tuned LLMs consistently struggle to adhere to explicit length instructions. To address these two limitations, we propose a novel framework wherein the reward model explicitly differentiates between human semantic preferences and response length requirements. Specifically, we introduce a $\textbf{R}$esponse-$\textbf{c}$onditioned $\textbf{B}$radley-$\textbf{T}$erry (Rc-BT) model that enhances the model's capability in length bias mitigating and length instruction following, through training on our augmented dataset. Furthermore, we propose the Rc-RM and Rc-DPO algorithm to leverage the Rc-BT model for reward modeling and direct policy optimization (DPO) of LLMs, simultaneously mitigating length bias and promoting adherence to length instructions. Extensive experiments across various foundational models and datasets demonstrate the effectiveness and generalizability of our approach.
title Disentangling Length Bias In Preference Learning Via Response-Conditioned Modeling
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2502.00814