Mending the Holes: Mitigating Reward Hacking in Reinforcement Learning for Multilingual Translation
arXiv cs.CL / 3/16/2026
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Key Points
- The paper introduces WALAR, a reinforcement learning method that uses only monolingual text to improve translation across 101 languages while preserving performance on high-resource languages.
- It mitigates holes in source-based multilingual quality estimation models by applying word alignment and language alignment to refine the RL reward.
- The authors trained an LLM for translation across 101 languages using WALAR and report outperforming LLaMAX on 1400 language directions in the Flores-101 dataset.
- The approach reduces reliance on parallel data for low-resource languages, showing that monolingual data can drive substantial multilingual translation gains.
- This work underscores the importance of reward design and alignment in RL for multilingual NLP and suggests broad implications for scaling multilingual LLMs.
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