Day 4 Lecture 1 and adversarial training Generative models
Idea: pit a generator and a discriminator against each other Generator tries to draw samples from P(X) Discriminator tries to tell if sample came from the generator or the real world Both discriminator and generator are deep networks (differentiable functions) Can train with backprop: train discriminator for a while, then train generator, then ................
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