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Variational Autoencoder with Arbitrary Conditioning

2018-06-06ICLR 2019Code Available0· sign in to hype

Oleg Ivanov, Michael Figurnov, Dmitry Vetrov

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Abstract

We propose a single neural probabilistic model based on variational autoencoder that can be conditioned on an arbitrary subset of observed features and then sample the remaining features in "one shot". The features may be both real-valued and categorical. Training of the model is performed by stochastic variational Bayes. The experimental evaluation on synthetic data, as well as feature imputation and image inpainting problems, shows the effectiveness of the proposed approach and diversity of the generated samples.

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