2020
DOI: 10.48550/arxiv.2006.16938
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Tomographic Auto-Encoder: Unsupervised Bayesian Recovery of Corrupted Data

Francesco Tonolini,
Pablo G. Moreno,
Andreas Damianou
et al.

Abstract: We propose a new probabilistic method for unsupervised recovery of corrupted data. Given a large ensemble of degraded samples, our method recovers accurate posteriors of clean values, allowing the exploration of the manifold of possible reconstructed data and hence characterising the underlying uncertainty. In this setting, direct application of classical variational methods often gives rise to collapsed densities that do not adequately explore the solution space. Instead, we derive our novel reduced entropy c… Show more

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