Some Tradeoffs in Continual Learning for Parliamentary Neural Machine Translation Systems
Sep 1, 2024·,,,,,,·
0 min read
Rebecca Knowles
Samuel Larkin
Michel Simard
Marc a Tessier
Gabriel Bernier-Colborne
Cyril Goutte
Chi-Kiu Lo
Abstract
In long-term translation projects, like Parliamentary text, there is a desire to build machine translation systems that can adapt to changes over time. We implement and examine a simple approach to continual learning for neural machine translation, exploring tradeoffs between consistency, the model`s ability to learn from incoming data, and the time a client would need to wait to obtain a newly trained translation system.
Type
Publication
Proceedings of the 16th Conference of the Association for Machine Translation in the Americas (Volume 1: Research Track)