EMNLP2021

Data and Parameter Scaling Laws for Neural Machine Translation

Mitchell A. Gordon, Kevin Duh, Jared Kaplan

24 citations

Abstract

We observe that the development crossentropy loss of supervised neural machine translation models scales like a power law with the amount of training data and the number of non-embedding parameters in the model. We discuss some practical implications of these results, such as predicting BLEU achieved by large scale models and predicting the ROI of labeling data in low-resource language pairs.