RLSR trains source rewriters via RL with translation-quality improvement as the reward, outperforming prompt baselines at 4B scale while matching larger models.
Automatic Input Rewriting Improves Translation with Large Language Models
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Rewrite to Translate, Translate to Reward: Reinforcement Learning for Source Rewriting in Machine Translation
RLSR trains source rewriters via RL with translation-quality improvement as the reward, outperforming prompt baselines at 4B scale while matching larger models.