Traditional feedback learning for hallucination reduction relies on labor-intensive manual labeling or expensive proprietary models. This leaves the community without foundational knowledge about how to build high-quality feedback with open-source MLLMs. In this work, we introduce RLAIF-V, a novel framework that aligns MLLMs in a fully open-source paradigm. RLAIF-V maximally explores open-source MLLMs from two perspectives, including high-quality feedback data generation for preference learning and self-feedback guidance for inference-time scaling. Extensive experiments on six benchmarks in both automatic and human evaluation show that RLAIF-V substantially enhances the trustworthiness of models at both preference learning and inference time. RLAIF-V 7B reduces object hallucination by 80.7% and overall hallucination by 33.7%. Remarkably, RLAIF-V 12B further reveals the self-alignment potential of open-source MLLMs, where the model can learn from feedback of itself to achieve super GPT-4V trustworthiness.
RLAIF-V: Open-Source AI Feedback Leads to Super GPT-4V Trustworthiness
Traditional feedback learning for hallucination reduction relies on labor-intensive manual labeling or expensive proprietary models.
- Year
- 2024
- Venue
- CVPR 2025 1
- Authors
- 16
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2405.17220v2ARXIV-DEFAULT
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