Publication | Open Access
Hyperspherical Variational Auto-Encoders
104
Citations
14
References
2018
Year
EngineeringMachine LearningData ScienceVariational Auto-encoderPattern RecognitionVariational AnalysisAutoencodersGaussian ProcessGaussian AnalysisGenerative ModelStatistical InferenceComputer ScienceGaussian DistributionDimensionality ReductionDeep LearningHyperspherical Variational Auto-encodersCalculus Of VariationHyperspherical Vae
The Variational Auto-Encoder (VAE) is one of the most used unsupervised machine learning models. But although the default choice of a Gaussian distribution for both the prior and posterior represents a mathematically convenient distribution often leading to competitive results, we show that this parameterization fails to model data with a latent hyperspherical structure. To address this issue we propose using a von Mises-Fisher (vMF) distribution instead, leading to a hyperspherical latent space. Through a series of experiments we show how such a hyperspherical VAE, or $\mathcal{S}$-VAE, is more suitable for capturing data with a hyperspherical latent structure, while outperforming a normal, $\mathcal{N}$-VAE, in low dimensions on other data types. Code at http://github.com/nicola-decao/s-vae-tf and https://github.com/nicola-decao/s-vae-pytorch
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