Litcius/Paper detail

Fast Nearest Neighbor Machine Translation

Yuxian Meng, Xiaoya Li, Xiayu Zheng, Fei Wu, Xiaofei Sun, Tianwei Zhang, Jiwei Li

2022Findings of the Association for Computational Linguistics: ACL 202228 citationsDOIOpen Access PDF

Abstract

Though nearest neighbor Machine Translation (kNN-MT) This means each step for each beam in the beam search has to search over the entire reference corpus. kNN-MT is thus two-orders slower than vanilla MT models, making it hard to be applied to real-world applications, especially online services. In this work, we propose Fast kNN-MT to address this issue. Fast kNN-MT constructs a significantly smaller datastore for the nearest neighbor search: for each word in a source sentence, Fast kNN-MT first selects its nearest tokenlevel neighbors, which is limited to tokens that are the same as the query token. Then at each decoding step, in contrast to using the entire corpus as the datastore, the search space is limited to target tokens corresponding to the previously selected reference source tokens. This strategy avoids search through the whole datastore for nearest neighbors and drastically improves decoding efficiency. Without loss of performance, Fast kNN-MT is two-orders faster than kNN-MT, and is only two times slower than the standard NMT model. Fast kNN-MT enables the practical use of kNN-MT systems in real-world MT applications. 1

Topics & Concepts

Computer scienceSecurity tokenk-nearest neighbors algorithmNearest neighbor searchDecoding methodsMachine translationArtificial intelligenceTranslation (biology)Code (set theory)Pattern recognition (psychology)AlgorithmProgramming languageBiochemistrySet (abstract data type)Computer securityGeneChemistryMessenger RNANatural Language Processing TechniquesTopic ModelingGenomics and Phylogenetic Studies
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