A VAE framework decomposes KL divergence into index-code mutual information, total correlation, and dimension-wise KL to achieve disentangled and interpretable manifold learning on unsteady fluid flows.
Philosophical transactions of the royal society A: Mathematical, Physical and Engineering Sciences374(2065), 20150202 (2016)
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Information decomposition for disentangled and interpretable manifold learning of fluid flows via variational autoencoders
A VAE framework decomposes KL divergence into index-code mutual information, total correlation, and dimension-wise KL to achieve disentangled and interpretable manifold learning on unsteady fluid flows.