In this paper we describe our efforts to make a bidirectional Congolese Swahili (SWC) to French (FRA) neural machine translation system with the motivation of improving humanitarian translation workflows. For training, we created a 25,302-sentence general domain parallel corpus and combined it with publicly available data. Experimenting with low-resource methodologies like cross-dialect transfer and semi-supervised learning, we recorded improvements of up to 2.4 and 3.5 BLEU points in the SWC-FRA and FRA-SWC directions, respectively. We performed human evaluations to assess the usability of our models in a COVID-domain chatbot that operates in the Democratic Republic of Congo (DRC). Direct assessment in the SWC-FRA direction demonstrated an average quality ranking of 6.3 out of 10 with 75% of the target strings conveying the main message of the source text. For the FRA-SWC direction, our preliminary tests on post-editing assessment showed its potential usefulness for machine-assisted translation. We make our models, datasets containing up to 1 million sentences, our development pipeline, and a translator web-app available for public use.
Congolese Swahili Machine Translation for Humanitarian Response
A bidirectional neural machine translation system from Congolese Swahili to French improves humanitarian translation workflows through cross-dialect transfer and semi-supervised learning, showing effectiveness in a COVID-domain chatbot.
- Year
- 2021
- Venue
- arXiv 2021
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- 5
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2103.10734ARXIV-DEFAULT
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