Publication | Closed Access
Improved Variational Inference with Inverse Autoregressive Flow
804
Citations
11
References
2016
Year
EngineeringMachine LearningVariational AnalysisAutoencodersInverse Autoregressive FlowData ScienceGenerative ModelRegularization (Mathematics)Latent VariablesStatisticsSynthetic Image GenerationMachine VisionInverse ProblemsMedical Image ComputingComputer VisionGenerative Adversarial NetworkVariational AutoencoderStatistical InferenceGenerative Ai
The framework of normalizing flows provides a general strategy for flexible variational inference of posteriors over latent variables. We propose a new type of normalizing flow, inverse autoregressive flow (IAF), that, in contrast to earlier published flows, scales well to high-dimensional latent spaces. The proposed flow consists of a chain of invertible transformations, where each transformation is based on an autoregressive neural network. In experiments, we show that IAF significantly improves upon diagonal Gaussian approximate posteriors. In addition, we demonstrate that a novel type of variational autoencoder, coupled with IAF, is competitive with neural autoregressive models in terms of attained log-likelihood on natural images, while allowing significantly faster synthesis.
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