Rethinking Reinforcement Learning for Language Models: A New Approach
The Thinking Seeds framework introduces a fresh perspective on reinforcement learning for language models. By mixing on-policy and off-policy data at the token level, it enhances training stability…
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Reinforcement Learning to Train Large Language Models to Explain Human Decisions
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