What's Wrong With This Translation? Simplifying Error Annotation For Crowd Evaluation
Kuupäev
2025-03
Ajakirja pealkiri
Ajakirja ISSN
Köite pealkiri
Kirjastaja
University of Tartu Library
Abstrakt
Machine translation (MT) for Faroese faces challenges due to limited expert annotators and a lack of robust evaluation metrics. This study addresses these challenges by developing an MQM-inspired expert annotation framework to identify key error types and a simplified crowd evaluation scheme to enable broader participation. Our findings based on an analysis of 200 sentences translated by three models demonstrate that simplified crowd evaluations align with expert assessments, paving the way for improved accessibility and democratization of MT evaluation.