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RoVRM: A Robust Visual Reward Model Optimized via Auxiliary Textual Preference Data

A Robust Visual Reward Model (RoVRM) improves human-preference alignment in large vision-language models by leveraging auxiliary textual data through a three-phase progressive training and optimal transport-based preference data selection method.

Year
2024
Venue
arXiv 2024
Authors
12
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arxiv.org/abs/2408.12109v2ARXIV-DEFAULT
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Abstract

Large vision-language models (LVLMs) often fail to align with human preferences, leading to issues like generating misleading content without proper visual context (also known as hallucination). A promising solution to this problem is using human-preference alignment techniques, such as best-of-n sampling and reinforcement learning. However, these techniques face the difficulty arising from the scarcity of visual preference data, which is required to train a visual reward model (VRM). In this work, we continue the line of research. We present a Robust Visual Reward Model (RoVRM) which improves human-preference alignment for LVLMs. RoVRM leverages auxiliary textual preference data through a three-phase progressive training and optimal transport-based preference data selection to effectively mitigate the scarcity of visual preference data. We experiment with RoVRM on the commonly used vision-language tasks based on the LLaVA-1.5-7B and -13B models. Experimental results demonstrate that RoVRM consistently outperforms traditional VRMs. Furthermore, our three-phase progressive training and preference data selection approaches can yield consistent performance gains over ranking-based alignment techniques, such as direct preference optimization.

Authors

12