Comments (2)
Hi, thanks for your interest in our work. Our motivation lies in maximizing the ratio. However, in the implementation, to be consistent with the optimizer of the original loss of G (we minimize the loss of G), we minimize the reciprocal of the ratio. This has the same effect.
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Oh,Thank your reply,I understand it now!
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Related Issues (20)
- Questions about DRIT HOT 2
- How many images used for computing FID? HOT 1
- where is the appendix of the paper? HOT 1
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