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Using Source-Side Confidence Estimation for Reliable Translation into Unfamiliar Languages

30 March 2025
Kenneth J. Sible
David Chiang
    UQLM
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Abstract

We present an interactive machine translation (MT) system designed for users who are not proficient in the target language. It aims to improve trustworthiness and explainability by identifying potentially mistranslated words and allowing the user to intervene to correct mistranslations. However, confidence estimation in machine translation has traditionally focused on the target side. Whereas the conventional approach to source-side confidence estimation would have been to project target word probabilities to the source side via word alignments, we propose a direct, alignment-free approach that measures how sensitive the target word probabilities are to changes in the source embeddings. Experimental results show that our method outperforms traditional alignment-based methods at detection of mistranslations.

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@article{sible2025_2503.23305,
  title={ Using Source-Side Confidence Estimation for Reliable Translation into Unfamiliar Languages },
  author={ Kenneth J. Sible and David Chiang },
  journal={arXiv preprint arXiv:2503.23305},
  year={ 2025 }
}
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