Paper ID: 2410.21126
Current State-of-the-Art of Bias Detection and Mitigation in Machine Translation for African and European Languages: a Review
Catherine Ikae, Mascha Kurpicz-Briki
Studying bias detection and mitigation methods in natural language processing and the particular case of machine translation is highly relevant, as societal stereotypes might be reflected or reinforced by these systems. In this paper, we analyze the state-of-the-art with a particular focus on European and African languages. We show how the majority of the work in this field concentrates on few languages, and that there is potential for future research to cover also the less investigated languages to contribute to more diversity in the research field.
Submitted: Oct 28, 2024