Eirini Zafeiridou


2022

pdf bib
Welocalize-ARC/NKUA’s Submission to the WMT 2022 Quality Estimation Shared Task
Eirini Zafeiridou | Sokratis Sofianopoulos
Proceedings of the Seventh Conference on Machine Translation (WMT)

This paper presents our submission to the WMT 2022 quality estimation shared task and more specifically to the quality prediction sentence-level direct assessment (DA) subtask. We build a multilingual system based on the predictor–estimator architecture by using the XLM-RoBERTa transformer for feature extraction and a regression head on top of the final model to estimate the z-standardized DA labels. Furthermore, we use pretrained models to extract useful knowledge that reflect various criteria of quality assessment and demonstrate good correlation with human judgements. We optimize the performance of our model by incorporating this information as additional external features in the input data and by applying Monte Carlo dropout during both training and inference.