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Revisiting Machine Translation for Cross-lingual Classification

Mikel Artetxe, Vedanuj Goswami, Shruti Bhosale, Angela Fan, Luke Zettlemoyer

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Abstract

Machine Translation (MT) has been widely used for cross-lingual classification, either by translating the test set into English and running inference with a monolingual model (translate-test), or translating the training set into the target languages and finetuning a multilingual model (translate-train). However, most research in the area focuses on the multilingual models rather than the MT component. We show that, by using a stronger MT system and mitigating the mismatch between training on original text and running inference on machine translated text, translate-test can do substantially better than previously assumed. The optimal approach, however, is highly task dependent, as we identify various sources of cross-lingual transfer gap that affect different tasks and approaches differently. Our work calls into question the dominance of multilingual models for cross-lingual classification, and prompts to pay more attention to MT-based baselines.

Topics & Concepts

Computer scienceMachine translationInferenceArtificial intelligenceNatural language processingTest setTraining setTask (project management)Set (abstract data type)Test (biology)Machine learningDominance (genetics)EconomicsGeneChemistryBiologyProgramming languageBiochemistryManagementPaleontologyTopic ModelingNatural Language Processing TechniquesMultimodal Machine Learning Applications