CLAIMay 15, 2024

Word Alignment as Preference for Machine Translation

arXiv:2405.09223v230 citationsh-index: 9EMNLP
Originality Incremental advance
AI Analysis

This addresses a critical problem of hallucination and omission in machine translation for users of LLM-based systems, but it is incremental as it builds on existing preference optimization techniques.

The paper tackles hallucination and omission in machine translation by using word alignment as a preference signal to optimize an LLM-based model, showing effectiveness in mitigating these issues with proposed evaluation methods using GPT-4, though overall translation performance yields mixed results with slight BLEU increases and COMET decreases.

The problem of hallucination and omission, a long-standing problem in machine translation (MT), is more pronounced when a large language model (LLM) is used in MT because an LLM itself is susceptible to these phenomena. In this work, we mitigate the problem in an LLM-based MT model by guiding it to better word alignment. We first study the correlation between word alignment and the phenomena of hallucination and omission in MT. Then we propose to utilize word alignment as preference to optimize the LLM-based MT model. The preference data are constructed by selecting chosen and rejected translations from multiple MT tools. Subsequently, direct preference optimization is used to optimize the LLM-based model towards the preference signal. Given the absence of evaluators specifically designed for hallucination and omission in MT, we further propose selecting hard instances and utilizing GPT-4 to directly evaluate the performance of the models in mitigating these issues. We verify the rationality of these designed evaluation methods by experiments, followed by extensive results demonstrating the effectiveness of word alignment-based preference optimization to mitigate hallucination and omission. On the other hand, although it shows promise in mitigating hallucination and omission, the overall performance of MT in different language directions remains mixed, with slight increases in BLEU and decreases in COMET.

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