Inverting Deep Generative models, One layer at a time
–Neural Information Processing Systems
We study the problem of inverting a deep generative model with ReLU activations. Inversion corresponds to finding a latent code vector that explains observed measurements as much as possible. In most prior works this is performed by attempting to solve a non-convex optimization problem involving the generator. In this paper we obtain several novel theoretical results for the inversion problem. We show that for the realizable case, single layer inversion can be performed exactly in polynomial time, by solving a linear program.
Neural Information Processing Systems
Dec-25-2025, 03:31:29 GMT
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