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IntelliCAT: Intelligent Machine Translation Post-Editing with Quality Estimation and Translation Suggestion

Authors :
Heesoo Park
Jaemin Jo
Dongjun Lee
Junhyeong Ahn
Publication Year :
2021
Publisher :
arXiv, 2021.

Abstract

We present IntelliCAT, an interactive translation interface with neural models that streamline the post-editing process on machine translation output. We leverage two quality estimation (QE) models at different granularities: sentence-level QE, to predict the quality of each machine-translated sentence, and word-level QE, to locate the parts of the machine-translated sentence that need correction. Additionally, we introduce a novel translation suggestion model conditioned on both the left and right contexts, providing alternatives for specific words or phrases for correction. Finally, with word alignments, IntelliCAT automatically preserves the original document's styles in the translated document. The experimental results show that post-editing based on the proposed QE and translation suggestions can significantly improve translation quality. Furthermore, a user study reveals that three features provided in IntelliCAT significantly accelerate the post-editing task, achieving a 52.9\% speedup in translation time compared to translating from scratch. The interface is publicly available at https://intellicat.beringlab.com/.<br />Comment: ACL 2021 (system demonstration)

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....157a3f50061dba275ed774b8864370af
Full Text :
https://doi.org/10.48550/arxiv.2105.12172