β-VAEs can retain label information even at high compression
classification
💻 cs.LG
stat.ML
keywords
betaeveninformationlabelretainacrossamountarchitectures
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In this paper, we investigate the degree to which the encoding of a $\beta$-VAE captures label information across multiple architectures on Binary Static MNIST and Omniglot. Even though they are trained in a completely unsupervised manner, we demonstrate that a $\beta$-VAE can retain a large amount of label information, even when asked to learn a highly compressed representation.
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