Zero-Shot Language Transfer vs Iterative Back Translation for Unsupervised Machine Translation
Joshi, Aviral, Huang, Chengzhi, Singh, Har Simrat
–arXiv.org Artificial Intelligence
This work focuses on comparing different solutions for machine translation on low resource language pairs, namely, with zero-shot transfer learning and unsupervised machine translation. We discuss how the data size affects the performance of both unsupervised MT and transfer learning. Additionally we also look at how the domain of the data affects the result of unsupervised MT. The code to all the experiments performed in this project are accessible on Github.
arXiv.org Artificial Intelligence
Mar-31-2021
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- Europe > Slovenia (0.04)
- North America > United States
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- Pennsylvania > Allegheny County
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- Texas > Travis County
- Asia > Thailand
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- Research Report (0.83)
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