PheMT is a phenomenon-wise dataset created to evaluate NMT robustness against linguistic phenomena in Japanese-English UGC translation, with experiments showing major performance drops on certain phenomena.
In 6th International Conference on Learning Representations, ICLR 2018
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PheMT: A Phenomenon-wise Dataset for Machine Translation Robustness on User-Generated Contents
PheMT is a phenomenon-wise dataset created to evaluate NMT robustness against linguistic phenomena in Japanese-English UGC translation, with experiments showing major performance drops on certain phenomena.