Learning a Multi-Domain Curriculum for Neural Machine Translation
Wei Wang, Ye Tian, Jiquan Ngiam, Yinfei Yang, Isaac Caswell, Zarana Parekh
Abstract
Most data selection research in machine translation focuses on improving a single domain. We perform data selection for multiple domains at once. This is achieved by carefully introducing instance-level domain-relevance features and automatically constructing a training curriculum to gradually concentrate on multi-domain relevant and noise-reduced data batches. Both the choice of features and the use of curriculum are crucial for balancing and improving all domains, including out-ofdomain. In large-scale experiments, the multidomain curriculum simultaneously reaches or outperforms the individual performance and brings solid gains over no-curriculum training.
Topics & Concepts
Computer scienceCurriculumDomain (mathematical analysis)Relevance (law)Machine learningMachine translationArtificial intelligenceSelection (genetic algorithm)Domain adaptationScale (ratio)Translation (biology)Noise (video)PsychologyMathematicsGenePolitical scienceMathematical analysisMessenger RNAChemistryPhysicsLawPedagogyBiochemistryQuantum mechanicsImage (mathematics)Classifier (UML)Natural Language Processing TechniquesTopic ModelingSoftware Engineering Research