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Unsupervised and Semi-supervised Learning with Categorical Generative Adversarial Networks

About

In this paper we present a method for learning a discriminative classifier from unlabeled or partially labeled data. Our approach is based on an objective function that trades-off mutual information between observed examples and their predicted categorical class distribution, against robustness of the classifier to an adversarial generative model. The resulting algorithm can either be interpreted as a natural generalization of the generative adversarial networks (GAN) framework or as an extension of the regularized information maximization (RIM) framework to robust classification against an optimal adversary. We empirically evaluate our method - which we dub categorical generative adversarial networks (or CatGAN) - on synthetic data as well as on challenging image classification tasks, demonstrating the robustness of the learned classifiers. We further qualitatively assess the fidelity of samples generated by the adversarial generator that is learned alongside the discriminative classifier, and identify links between the CatGAN objective and discriminative clustering algorithms (such as RIM).

Jost Tobias Springenberg• 2015

Related benchmarks

TaskDatasetResultRank
Image ClassificationCIFAR-10 (test)--
3381
Image ClassificationCIFAR-10 (test)
Accuracy90.6
906
Image ClassificationMNIST (test)--
882
Image ClassificationMNIST standard (test)--
40
Generative ModelingMNIST (test)--
35
ClassificationPI-MNIST (test)
Classification Error0.0091
26
Image ClassificationCIFAR-10 400 labels per class (test)
Accuracy80.4
22
ClassificationMNIST
Error Rate0.91
18
Semi-supervised classificationMNIST 100 labels
Error Rate0.0191
16
Image ClassificationCIFAR10 4,000 labels (train)
Error Rate19.58
15
Showing 10 of 16 rows

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