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Prediction Under Uncertainty with Error-Encoding Networks

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arxiv 1711.04994 v3 pith:QQ7AA3RY submitted 2017-11-14 cs.AI

Prediction Under Uncertainty with Error-Encoding Networks

classification cs.AI
keywords componentslatentpredictionpredictionstraininguncertaintyunpredictableable
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this work we introduce a new framework for performing temporal predictions in the presence of uncertainty. It is based on a simple idea of disentangling components of the future state which are predictable from those which are inherently unpredictable, and encoding the unpredictable components into a low-dimensional latent variable which is fed into a forward model. Our method uses a supervised training objective which is fast and easy to train. We evaluate it in the context of video prediction on multiple datasets and show that it is able to consistently generate diverse predictions without the need for alternating minimization over a latent space or adversarial training.

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