Towards Mitigating Gender Bias in a decoder-based Neural Machine Translation model by Adding Contextual Information
Christine Basta, Marta R. Costa‐jussà, José A. R. Fonollosa
Abstract
Gender bias negatively impacts many natural language processing applications, including machine translation (MT). The motivation behind this work is to study whether recent proposed MT techniques are significantly contributing to attenuate biases in document-level and genderbalanced data. For the study, we consider approaches of adding the previous sentence and the speaker information, implemented in a decoder-based neural MT system. We show improvements both in translation quality (+1 BLEU point) as well as in gender bias mitigation on WinoMT (+5% accuracy).
Topics & Concepts
Machine translationComputer scienceSentenceNatural language processingArtificial intelligencePoint (geometry)Speech recognitionQuality (philosophy)Natural language generationTranslation (biology)Gender biasNatural languageMachine learningPsychologyBiochemistryMathematicsGeometryChemistryPhilosophyGeneMessenger RNAEpistemologySocial psychologyNatural Language Processing TechniquesTopic ModelingText Readability and Simplification