Litcius/Paper detail

Semi-Supervised Learning with Normalizing Flows

Pavel Izmailov, Polina Kirichenko, Marc Finzi, Andrew Gordon Wilson

202037 citations

Abstract

Normalizing flows transform a latent distribution through an invertible neural network for a flexible and pleasingly simple approach to generative modelling, while preserving an exact likelihood. We propose FlowGMM, an end-to-end approach to generative semi supervised learning with normalizing flows, using a latent Gaussian mixture model. FlowGMM is distinct in its simplicity, unified treatment of labelled and unlabelled data with an exact likelihood, interpretability, and broad applicability beyond image data. We show promising results on a wide range of applications, including AG-News and Yahoo Answers text data, tabular data, and semi-supervised image classification. We also show that FlowGMM can discover interpretable structure, provide real-time optimization-free feature visualizations, and specify well calibrated predictive distributions.

Topics & Concepts

InterpretabilityComputer scienceArtificial intelligenceMachine learningFeature (linguistics)Range (aeronautics)Simple (philosophy)Pattern recognition (psychology)Generative modelMixture modelArtificial neural networkGaussianSemi-supervised learningGenerative grammarInvertible matrixImage (mathematics)MathematicsEpistemologyPhysicsMaterials sciencePhilosophyQuantum mechanicsLinguisticsPure mathematicsComposite materialGenerative Adversarial Networks and Image SynthesisMusic and Audio ProcessingHuman Pose and Action Recognition