ImplicitRM: Unbiased Reward Modeling from Implicit Preference Data for LLM alignment
Abstract
Reward modeling represents a long-standing challenge in reinforcement learning from human feedback (RLHF) for aligning language models. Current reward modeling is heavily contingent upon experimental feedback data with high collection costs. In this work, we study \textit{implicit reward modeling} -- learning reward models from implicit human feedback (e.g., clicks and copies) -- as a cost-effective alternative. We identify two fundamental challenges in implicit reward modeling: (1) Implicit preference data lacks definitive negative samples, which makes standard positive-negative classification methods inapplicable; (2) Implicit preference data suffers from user preference bias, where different responses have different propensities to elicit user feedback actions, which exacerbates the difficulty of distinguishing definitive negative samples. To address these challenges, we propose ImplicitRM, which aims to learn unbiased reward models from implicit preference data. ImplicitRM stratifies training samples into four latent groups via a stratification model. Building on this, it derives a learning objective through likelihood maximization, which we prove is theoretically unbiased, effectively resolving both challenges. Experiments demonstrate that ImplicitRM learns accurate reward models across implicit preference datasets. Code is available on our project website.
Cite
@article{arxiv.2603.23184,
title = {ImplicitRM: Unbiased Reward Modeling from Implicit Preference Data for LLM alignment},
author = {Hao Wang and Haocheng Yang and Licheng Pan and Lei Shen and Xiaoxi Li and Yinuo Wang and Zhichao Chen and Yuan Lu and Haoxuan Li and Zhouchen Lin},
journal= {arXiv preprint arXiv:2603.23184},
year = {2026}
}