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?. Predictor and /. Discriminator, Linear (2304, 100) with LeakyReLU -Dropout(0.2) -Linear (100, 10) (predictor) / Linear (100, 2) (discriminator) -Sof tmax() Figure 8: Visualization of digit datasets