k-Nearest-Neighbor Machine Translation (kNN-MT) has been recently proposed as a non-parametric solution for domain adaptation in neural machine translation (NMT). It aims to alleviate the performance degradation of advanced MT systems in translating out-of-domain sentences by coordinating with an additional token-level feature-based retrieval module constructed from in-domain data. Previous studies have already demonstrated that non-parametric NMT is even superior to models fine-tuned on out-of-domain data. In spite of this success, kNN retrieval is at the expense of high latency, in particular for large datastores. To make it practical, in this paper, we explore a more efficient kNN-MT and propose to use clustering to improve the retrieval...
Neural Machine Translation (NMT) has achieved promising results comparable with Phrase-Based Statist...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceIn this paper, we propose an efficient KNN service, called KPS (KNN-Peer-Sampl...
K-Nearest Neighbor Neural Machine Translation (kNN-MT) successfully incorporates external corpus by ...
Though nearest neighbor Machine Translation ($k$NN-MT) \citep{khandelwal2020nearest} has proved to i...
Recently, $k$NN-MT has shown the promising capability of directly incorporating the pre-trained neur...
k-nearest-neighbor machine translation (kNN-MT) boosts the translation quality of a pre-trained neur...
Semi-parametric models, which augment generation with retrieval, have led to impressive results in l...
kNN-MT presents a new paradigm for domain adaptation by building an external datastore, which usuall...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
K-Nearest Neighbour (k-NN) is a widely used technique for classifying and clustering data. K-NN is e...
Neural machine translation (NMT) has achieved notable success in recent times, however it is also wi...
With the advent of deep neural networks in recent years, Neural Machine Translation (NMT) systems ha...
Many fields are experiencing a Big Data explosion, with data collection rates outpacing the rate of ...
Document-level Neural Machine Translation (DocNMT) has been proven crucial for handling discourse ph...
Neural Machine Translation (NMT) has achieved promising results comparable with Phrase-Based Statist...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceIn this paper, we propose an efficient KNN service, called KPS (KNN-Peer-Sampl...
K-Nearest Neighbor Neural Machine Translation (kNN-MT) successfully incorporates external corpus by ...
Though nearest neighbor Machine Translation ($k$NN-MT) \citep{khandelwal2020nearest} has proved to i...
Recently, $k$NN-MT has shown the promising capability of directly incorporating the pre-trained neur...
k-nearest-neighbor machine translation (kNN-MT) boosts the translation quality of a pre-trained neur...
Semi-parametric models, which augment generation with retrieval, have led to impressive results in l...
kNN-MT presents a new paradigm for domain adaptation by building an external datastore, which usuall...
Neural machine translation (NMT), where neural networks are used to generate translations, has revol...
K-Nearest Neighbour (k-NN) is a widely used technique for classifying and clustering data. K-NN is e...
Neural machine translation (NMT) has achieved notable success in recent times, however it is also wi...
With the advent of deep neural networks in recent years, Neural Machine Translation (NMT) systems ha...
Many fields are experiencing a Big Data explosion, with data collection rates outpacing the rate of ...
Document-level Neural Machine Translation (DocNMT) has been proven crucial for handling discourse ph...
Neural Machine Translation (NMT) has achieved promising results comparable with Phrase-Based Statist...
International audienceK-Nearest Neighbors (KNN) is a crucial tool for many applications , e.g. recom...
International audienceIn this paper, we propose an efficient KNN service, called KPS (KNN-Peer-Sampl...