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IB-GAN: Disentangled Representation Learning with Information Bottleneck Generative Adversarial Networks

Insu Jeon, Wonkwang Lee, Myeongjang Pyeon, Gunhee Kim

2021Proceedings of the AAAI Conference on Artificial Intelligence46 citationsDOIOpen Access PDF

Abstract

We propose a new GAN-based unsupervised model for disentangled representation learning. The new model is discovered in an attempt to utilize the Information Bottleneck (IB) framework to the optimization of GAN, thereby named IB-GAN. The architecture of IB-GAN is partially similar to that of InfoGAN but has a critical difference; an intermediate layer of the generator is leveraged to constrain the mutual information between the input and the generated output. The intermediate stochastic layer can serve as a learnable latent distribution that is trained with the generator jointly in an end-to-end fashion. As a result, the generator of IB-GAN can harness the latent space in a disentangled and interpretable manner. With the experiments on dSprites and Color-dSprites dataset, we demonstrate that IB-GAN achieves competitive disentanglement scores to those of state-of-the-art β-VAEs and outperforms InfoGAN. Moreover, the visual quality and the diversity of samples generated by IB-GAN are often better than those by β-VAEs and Info-GAN in terms of FID score on CelebA and 3D Chairs dataset.

Topics & Concepts

Representation (politics)BottleneckGenerator (circuit theory)Computer scienceInformation bottleneck methodLayer (electronics)Generative grammarArtificial intelligenceQuality (philosophy)Space (punctuation)Mutual informationPower (physics)Materials sciencePolitical scienceComposite materialQuantum mechanicsPhilosophyLawPhysicsEmbedded systemEpistemologyOperating systemPoliticsGenerative Adversarial Networks and Image SynthesisDigital Media Forensic DetectionAdversarial Robustness in Machine Learning
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