Litcius/Paper detail

Monolingual Adapters for Zero-Shot Neural Machine Translation

Jerin Philip, Alexandre Bérard, Matthias Gallé, Laurent Besacier

202060 citationsDOIOpen Access PDF

Abstract

We propose a novel adapter layer formalism for adapting multilingual models. They are more parameter-efficient than existing adapter layers while obtaining as good or better performance. The layers are specific to one language (as opposed to bilingual adapters) allowing to compose them and generalize to unseen language-pairs. In this zero-shot setting, they obtain a median improvement of +2.77 BLEU points over a strong 20-language multilingual Transformer baseline trained on TED talks.

Topics & Concepts

Adapter (computing)Computer scienceMachine translationTransformerFormalism (music)Language modelArtificial intelligenceZero (linguistics)Natural language processingSpeech recognitionComputer hardwareEngineeringLinguisticsElectrical engineeringMusicalPhilosophyVisual artsArtVoltageNatural Language Processing TechniquesTopic ModelingSpeech Recognition and Synthesis