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Transferring Textual Preferences to Vision-Language Understanding through Model Merging (2502.13487v2)
Published 19 Feb 2025 in cs.CL, cs.AI, cs.CV, and cs.LG
Abstract: Large vision-LLMs (LVLMs) perform outstandingly across various multimodal tasks. However, their ability to evaluate generated content remains limited, and training vision-language reward models (VLRMs) with preference data is computationally expensive. This paper explores a training-free alternative by merging text-based reward models (RMs) with LVLMs to create VLRMs. Our approach shows that integrating these models leads to improved performance over LVLMs' scoring and text-based RMs, offering an efficient method for incorporating textual preferences into LVLMs.
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