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 bype-v ae


A Derivation of Eq . 9

Neural Information Processing Systems

We already report the t-SNE visualization of ByPE-V AE and standard V AE in Figure. Figure 6: t-SNE visualization of learned latent representations, colored by labels. Second, we give more generated samples in Fig.8, among Figure 7: Random samples drawn from ByPE-V AEs trained on different datasets. Figure 8: Samples generated by ByPE-V AE based on the same pseudodata point in each plate. In section 5.2, We only report the KNN results of MNIST and Fashion MNIST in the Figure 1.



A Derivation of Eq . 9

Neural Information Processing Systems

We already report the t-SNE visualization of ByPE-V AE and standard V AE in Figure. Figure 6: t-SNE visualization of learned latent representations, colored by labels. Second, we give more generated samples in Fig.8, among Figure 7: Random samples drawn from ByPE-V AEs trained on different datasets. Figure 8: Samples generated by ByPE-V AE based on the same pseudodata point in each plate. In section 5.2, We only report the KNN results of MNIST and Fashion MNIST in the Figure 1.


ByPE-V AE: Bayesian Pseudocoresets Exemplar VAE

Neural Information Processing Systems

Recent studies show that advanced priors play a major role in deep generative models. Exemplar V AE, as a variant of V AE with an exemplar-based prior, has achieved impressive results.