InfoGAN: Interpretable Representation Learning by Information Maximizing Generative Adversarial Nets
This addresses the problem of interpretable representation learning for AI researchers, offering a novel unsupervised approach that is not incremental.
InfoGAN tackles unsupervised learning of disentangled representations by extending Generative Adversarial Networks with an information-theoretic objective, achieving interpretable results competitive with supervised methods on datasets like MNIST, SVHN, and CelebA.
This paper describes InfoGAN, an information-theoretic extension to the Generative Adversarial Network that is able to learn disentangled representations in a completely unsupervised manner. InfoGAN is a generative adversarial network that also maximizes the mutual information between a small subset of the latent variables and the observation. We derive a lower bound to the mutual information objective that can be optimized efficiently, and show that our training procedure can be interpreted as a variation of the Wake-Sleep algorithm. Specifically, InfoGAN successfully disentangles writing styles from digit shapes on the MNIST dataset, pose from lighting of 3D rendered images, and background digits from the central digit on the SVHN dataset. It also discovers visual concepts that include hair styles, presence/absence of eyeglasses, and emotions on the CelebA face dataset. Experiments show that InfoGAN learns interpretable representations that are competitive with representations learned by existing fully supervised methods.