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The ACGAN training procedure is not optimal

The ACGAN training procedure is not optimal
@ElApseR
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ElApseR commented Feb 6, 2019

I think this is correct and makes training stable.

By the article,

$$L_s=E[logP(S=real|X_{real})]+E[logP(S=fake|X_{fake})]$$ $$L_c=E[logP(C=c|X_{real})]+E[logP(C=c|X_{fake})]$$ $$D = argmax(L_s+L_c)$$ $$G = argmax(L_c-L_s)$$

which means, you don't need to train Q separately. Also, Q shouldn't optimize variables of G.

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2 participants