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Khrylx avatar Khrylx commented on August 23, 2024

The BCELoss we use for the discriminator will divide the loss by the number of samples. So it should be fine.

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SapanaChaudhary avatar SapanaChaudhary commented on August 23, 2024

That is right. So, the whole of expert data is used in each iteration. Is that fair? If I were to sample the same number of data samples (from complete pool of expert data) as that of generator's, how would you suggest I sample (uniformly random)?

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Khrylx avatar Khrylx commented on August 23, 2024

Yes, maybe randomly sample a batch of expert data.

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SapanaChaudhary avatar SapanaChaudhary commented on August 23, 2024

Okay. Thank you.

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