May 15, 2023, 12:46 a.m. | Radhika Sharma, Pragya Katyayan, Nisheeth Joshi

cs.CL updates on arXiv.org arxiv.org

In this paper, we have shown a method of improving the quality of neural
machine translation by translating/transliterating name entities as a
preprocessing step. Through experiments we have shown the performance gain of
our system. For evaluation we considered three types of name entities viz
person names, location names and organization names. The system was able to
correctly translate mostly all the name entities. For person names the accuracy
was 99.86%, for location names the accuracy was 99.63% and for …

arxiv evaluation machine machine translation neural machine translation paper performance quality through translation types viz

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