Increasing Expressivity of a Hyperspherical VAE
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| Publication date | 12-2019 |
| Event | Bayesian Deep Learning Workshop |
| Number of pages | 8 |
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| Abstract |
Learning suitable latent representations for observed, high-dimensional data is an important research topic underlying many recent advances in machine learning. While traditionally the Gaussian normal distribution has been the go-to latent parameterization, recently a variety of works have successfully proposed the use of manifold-valued latents. In one such work, the authors empirically show the potential benefits of using a hyperspherical von Mises-Fisher (vMF) distribution in low dimensionality. However, due to the unique distributional form of the vMF, expressivity in higher dimensional space is limited as a result of its scalar concentration parameter leading to a ‘hyperspherical bottleneck’. In this work we propose to extend the usability of hyperspherical parameterizations to higher dimensions using a product-space instead, showing improved results on a selection of image datasets.
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| Document type | Paper |
| Language | English |
| Published at | https://doi.org/10.48550/arXiv.1910.02912 |
| Published at | http://bayesiandeeplearning.org/2019/papers/30.pdf |
| Other links | https://github.com/trdavidson/increasing-expressivity-s-vae |
| Downloads |
30
(Final published version)
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