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What is the conclusion here? #1
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Hey there, thanks for the message, I read your survey paper a couple of year ago, it was very insightful! Although i left this repo quite some time ago, what I've found was that the representations learned by the HVAE within the latent space seems to be much more robust and demonstrated much better reconstruction quality compared to the Euclidean one , even for lower number of latent dimensions. I'm not entirely convinced how useful this might be, but it'll be interesting to see if the representations learned from the HVAE might be useful for some vision downstream tasks. It'll be good if this project can be revived somehow |
Thanks for the reply. I am always interested in extend generative models into hyperbolic space. That is the reason I am asking. |
Nice, thanks! Would be interesting to extend hyperbolic spaces beyond the VAE, do you have any thoughts on this? I'm also interested in seeing how we can quantify the learnt representations in hyperbolic space |
Any insights about the the value of the HVAE? Can it be better than Euclidean ones?
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