ACL2022
Detecting Various Types of Noise for Neural Machine Translation
Christian Herold, Jan Rosendahl, Joris Vanvinckenroye, Hermann Ney
摘要
We examine how various types of noise in the parallel training data impact the quality of neural machine translation systems. We create five types of artificial noise and analyze how they degrade performance in neural and statistical machine translation. We find that neural models are generally more harmed by noise than statistical models. For one especially egregious type of noise they learn to just copy the input sentence.