Machine Translation (MT) Researcher, Yasmin Moslem, joins SlatorPod to talk about her research on Domain-Specific Text Generation for Machine Translation — a project she conducted with Rejwanul Haque, John D. Kelleher, and Andy Way at the Adapt Center in Dublin.
Yasmin shares her experience working as a translator, discovering translation productivity (CAT) tools, and experimenting with translation memory to improve MT. She breaks down the paper’s approach to domain-specific MT training using back-translation for data augmentation.
She discusses how some LSPs are already implementing this approach in real-life, customizing it for different use cases. She explains why they used a combination of BLEU, Comet, and other quality evaluation frameworks as well as human evaluation to rate machine translation quality.
