To Annotate or Not? Predicting Performance Drop under Domain Shift
Hady Elsahar, Matthias Galle
NAVER LABS Europe
EMNLP 2019
In this paper we propose a method that can predict the drop in accuracy of a model suffering domain-shift with an error rate as little as 2.15% for sentiment analysis and 0.89% for POS tagging
respectively, without needing any labelled examples from the target domain.
Read more: https://medium.com/@hadyelsahar/predicting-when-ml-models-fail-in-production-a8a021592f8a
Code: https://github.com/hadyelsahar/domain-shift-prediction