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Semi-Supervised Learning with GANs: Revisiting Manifold Regularization (1805.08957v1)
Published 23 May 2018 in cs.LG and stat.ML
Abstract: GANS are powerful generative models that are able to model the manifold of natural images. We leverage this property to perform manifold regularization by approximating the Laplacian norm using a Monte Carlo approximation that is easily computed with the GAN. When incorporated into the feature-matching GAN of Improved GAN, we achieve state-of-the-art results for GAN-based semi-supervised learning on the CIFAR-10 dataset, with a method that is significantly easier to implement than competing methods.
- Bruno Lecouat (13 papers)
- Chuan-Sheng Foo (41 papers)
- Houssam Zenati (15 papers)
- Vijay R. Chandrasekhar (2 papers)