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微调强化学习×强化学习×
领域深度学习深度学习
方法族Machine learningMachine learning
起源年份2017–20221950s–1998
提出者Christiano, P. et al.; Ouyang, L. et al.Sutton, R. S. & Barto, A. G. (formalised); Bellman, R. (foundations)
类型Policy adaptation via fine-tuningSequential decision-making framework
开创性文献Ouyang, L., Wu, J., Jiang, X., Almeida, D., Wainwright, C., Mishkin, P., Zhang, C., Agarwal, S., Slama, K., Ray, A., Schulman, J., Hilton, J., Kelton, F., Miller, L., Simens, M., Askell, A., Welinder, P., Christiano, P., Leike, J., & Lowe, R. (2022). Training language models to follow instructions with human feedback. Advances in Neural Information Processing Systems, 35, 27730–27744. link ↗Sutton, R. S. & Barto, A. G. (2018). Reinforcement Learning: An Introduction (2nd ed.). MIT Press. ISBN: 978-0-262-03924-6
别名RL fine-tuning, policy fine-tuning, RLHF, reinforcement learning from human feedbackRL, reward-based learning, trial-and-error learning, policy optimization
相关52
摘要Fine-Tuned Reinforcement Learning adapts a pre-trained policy or model to a new task or behavioral objective using reinforcement signals — including human feedback — rather than retraining from scratch. Popularized by RLHF, it is the core technique behind aligning large language models and adapting deep RL agents to specialized environments with minimal additional data.Reinforcement Learning (RL) is a framework in which an agent learns to make sequential decisions by interacting with an environment, receiving scalar reward signals, and updating a policy to maximise cumulative future reward. Unlike supervised learning, no labeled examples are provided; the agent discovers optimal behavior entirely through experience and delayed feedback.
ScholarGate数据集
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  3. PUBLISHED

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ScholarGate方法对比: Fine-Tuned Reinforcement Learning · Reinforcement Learning. 于 2026-06-18 检索自 https://scholargate.app/zh/compare