Is an encoder within reach?
The encoder network of an autoencoder is an approximation of the nearest point projection onto the manifold spanned by the decoder. A concern with this approximation is that, while the output of the encoder is always unique, the projection can possibly have infinitely many values. This implies that...
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Zusammenfassung: | The encoder network of an autoencoder is an approximation of the nearest
point projection onto the manifold spanned by the decoder. A concern with this
approximation is that, while the output of the encoder is always unique, the
projection can possibly have infinitely many values. This implies that the
latent representations learned by the autoencoder can be misleading. Borrowing
from geometric measure theory, we introduce the idea of using the reach of the
manifold spanned by the decoder to determine if an optimal encoder exists for a
given dataset and decoder. We develop a local generalization of this reach and
propose a numerical estimator thereof. We demonstrate that this allows us to
determine which observations can be expected to have a unique, and thereby
trustworthy, latent representation. As our local reach estimator is
differentiable, we investigate its usage as a regularizer and show that this
leads to learned manifolds for which projections are more often unique than
without regularization. |
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DOI: | 10.48550/arxiv.2206.01552 |