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A Closer Look at Disentangling in βββ-VAE

11 December 2019
Harshvardhan Digvijay Sikka
Weishun Zhong
J. Yin
Cengiz Pehlevan
    CML
    CoGe
    BDL
    DRL
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Abstract

In many data analysis tasks, it is beneficial to learn representations where each dimension is statistically independent and thus disentangled from the others. If data generating factors are also statistically independent, disentangled representations can be formed by Bayesian inference of latent variables. We examine a generalization of the Variational Autoencoder (VAE), β\betaβ-VAE, for learning such representations using variational inference. β\betaβ-VAE enforces conditional independence of its bottleneck neurons controlled by its hyperparameter β\betaβ. This condition is in general not compatible with the statistical independence of latents. By providing analytical and numerical arguments, we show that this incompatibility leads to a non-monotonic inference performance in β\betaβ-VAE with a finite optimal β\betaβ.

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