Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

DT2IT-MRM: Debiased Preference Construction and Iterative Training for Multimodal Reward Modeling

About

Multimodal reward models (MRMs) play a crucial role in aligning Multimodal Large Language Models (MLLMs) with human preferences. Training a good MRM requires high-quality multimodal preference data. However, existing preference datasets face three key challenges: lack of granularity in preference strength, textual style bias, and unreliable preference signals. Besides, existing open-source multimodal preference datasets suffer from substantial noise, yet there is a lack of effective and scalable curation methods to enhance their quality. To address these limitations, we propose \textbf{DT2IT-MRM}, which integrates a \textbf{D}ebiased preference construction pipeline, a novel reformulation of text-to-image (\textbf{T2I}) preference data, and an \textbf{I}terative \textbf{T}raining framework that curates existing multimodal preference datasets for \textbf{M}ultimodal \textbf{R}eward \textbf{M}odeling. Our experimental results show that DT2IT-MRM achieves new \textbf{state-of-the-art} overall performance on three major benchmarks: VL-RewardBench, Multimodal RewardBench, and MM-RLHF-RewardBench.

Zhihong Zhang, Jie Zhao, Xiaojian Huang, Jin Xu, Zhuodong Luo, Xin Liu, Jiansheng Wei, Xuejin Chen• 2026

Related benchmarks

TaskDatasetResultRank
Multimodal Reward ModelingVL-RewardBench
Accuracy83.5
102
Multimodal Reward ModelingMultimodal RewardBench
Accuracy96.9
50
Multimodal Reward ModelingRewardBench Multimodal--
44
Multimodal Reward ModelingRewardBench MM-RLHF
MCQ Score95.24
20
Multimodal Reward ModelingMM-RLHF-RewardBench--
18
Multimodal Reward ModelingVL-RewardBench, Multimodal RewardBench, and MM-RLHF-RewardBench Aggregate
Accuracy84.1
13
Showing 6 of 6 rows

Other info

Follow for update