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arxiv_cl 90% Match Research Paper AI Researchers,Machine Learning Engineers,Developers of LLMs and MLLMs,Researchers in AI Safety and Alignment 17 hours ago

SAIL-RL: Guiding MLLMs in When and How to Think via Dual-Reward RL Tuning

large-language-models › multimodal-llms
📄 Abstract

Abstract: We introduce SAIL-RL, a reinforcement learning (RL) post-training framework that enhances the reasoning capabilities of multimodal large language models (MLLMs) by teaching them when and how to think. Existing approaches are limited by outcome-only supervision, which rewards correct answers without ensuring sound reasoning, and by uniform thinking strategies, which often lead to overthinking on simple tasks and underthinking on complex ones. SAIL-RL addresses these challenges with a dual reward system: the Thinking Reward, which evaluates reasoning quality through factual grounding, logical coherence, and answer consistency, and the Judging Reward, which adaptively determines whether deep reasoning or direct answering is appropriate. Experiments on the state-of-the-art SAIL-VL2 show that SAIL-RL improves reasoning and multimodal understanding benchmarks at both 4B and 8B scales, achieving competitive performance against commercial closed-source models such as GPT-4o, and substantially reduces hallucinations, establishing it as a principled framework for building more reliable and adaptive MLLMs. The code will be available at https://github.com/BytedanceDouyinContent/SAIL-RL.

Key Contributions

Introduces SAIL-RL, an RL post-training framework that enhances MLLM reasoning by teaching them 'when and how to think' using a dual-reward system. This addresses limitations of outcome-only supervision and uniform thinking strategies, leading to improved reasoning quality, factual grounding, and adaptive decision-making on when to reason deeply.

Business Value

Leads to more reliable and intelligent AI systems capable of complex reasoning, crucial for applications requiring high accuracy and trustworthiness, such as medical diagnosis, scientific research, and advanced decision support.