Abstract:Learning morphologically supplemented embedding spaces using
cross-lingual models has become an active area of research and
facilitated many research breakthroughs in various applications such as
machine translation, named entity recognition, document classification,
and natural language inference. However, the field has not become
customary for Southern African low-resourced languages. In this paper,
we present, evaluate and benchmark a cohort of cross-lingual embeddings
for the English-Southern African langu… Show more
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