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Great work! but seems insufficient "related work" #5

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alphadl opened this issue Apr 24, 2019 · 0 comments
Open

Great work! but seems insufficient "related work" #5

alphadl opened this issue Apr 24, 2019 · 0 comments

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@alphadl
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alphadl commented Apr 24, 2019

See title, as we all know, the DynamicConv has claimed that it achieved the state-of-the-art performance in many tasks (e.g., WMT14 ende). But I find that DynamicConv was never mentioned in your paper.

Would your team wanna conduct comparison experiments? Just like the issue659 in repository pytorch/fairseq

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