cs.AI updates on arXiv.org 08月18日
Controlling Multimodal LLMs via Reward-guided Decoding
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本文提出通过控制解码方法来适应MLLMs,构建奖励模型以指导解码过程,实现视觉定位的精准控制,并在基准测试中展示出优于现有方法的性能。

arXiv:2508.11616v1 Announce Type: cross Abstract: As Multimodal Large Language Models (MLLMs) gain widespread applicability, it is becoming increasingly desirable to adapt them for diverse user needs. In this paper, we study the adaptation of MLLMs through controlled decoding. To achieve this, we introduce the first method for reward-guided decoding of MLLMs and demonstrate its application in improving their visual grounding. Our method involves building reward models for visual grounding and using them to guide the MLLM's decoding process. Concretely, we build two separate reward models to independently control the degree of object precision and recall in the model's output. Our approach enables on-the-fly controllability of an MLLM's inference process in two ways: first, by giving control over the relative importance of each reward function during decoding, allowing a user to dynamically trade off object precision for recall in image captioning tasks; second, by giving control over the breadth of the search during decoding, allowing the user to control the trade-off between the amount of test-time compute and the degree of visual grounding. We evaluate our method on standard object hallucination benchmarks, showing that it provides significant controllability over MLLM inference, while consistently outperforming existing hallucination mitigation methods.

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MLLMs 控制解码 视觉定位 奖励模型 基准测试
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