Additive Interventions Yield Robust Multi-Domain Machine Translation Models
Abstract
Additive interventions are a recently-proposed mechanism for controlling target-side attributes in neural machine translation. In contrast to tag-based approaches which manipulate the raw source sequence, interventions work by directly modulating the encoder representation of all tokens in the sequence. We examine the role of additive interventions in a large-scale multi-domain machine translation setting and compare its performance in various inference scenarios. We find that while the performance difference is small between intervention-based systems and tag-based systems when the domain label matches the test domain, intervention-based systems are robust to label error, making them an attractive choice under label uncertainty. Further, we find that the superiority of single-domain fine-tuning comes under question when training data size is scaled, contradicting previous findings.
Cite
@article{arxiv.2210.12727,
title = {Additive Interventions Yield Robust Multi-Domain Machine Translation Models},
author = {Elijah Rippeth and Matt Post},
journal= {arXiv preprint arXiv:2210.12727},
year = {2022}
}
Comments
7 pages, 7 figures, WMT22 (Research Track)