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Difficulty of Generative Modeling Compared to Supervised Learning
The learning process of generative modeling requires optimizing intractable criteria. In the context of differentiable generator nets, the criteria are intractable because the data does not specify both the inputs and the outputs of the generator net. However, in the case of supervised learning, both the inputs and the outputs are given, and the optimization procedure needs only to learn how to produce the specified mapping.
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