ELBO as the Loss Function
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Note: “p(x|z)” means True Posterior, “q(z|x)” means Approximate Posterior
What if only use first term of the Loss?
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What’s the meaning of “GAN tend to lack full support over the data”?
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Why using Gaussian Distribution for latent variable?
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