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 deep hierarchical variational autoencoder


NVAE: A Deep Hierarchical Variational Autoencoder

Neural Information Processing Systems

Normalizing flows, autoregressive models, variational autoencoders (VAEs), and deep energy-based models are among competing likelihood-based frameworks for deep generative learning. Among them, VAEs have the advantage of fast and tractable sampling and easy-to-access encoding networks. However, they are currently outperformed by other models such as normalizing flows and autoregressive models. While the majority of the research in VAEs is focused on the statistical challenges, we explore the orthogonal direction of carefully designing neural architectures for hierarchical VAEs. We propose Nouveau VAE (NVAE), a deep hierarchical VAE built for image generation using depth-wise separable convolutions and batch normalization.


Review for NeurIPS paper: NVAE: A Deep Hierarchical Variational Autoencoder

Neural Information Processing Systems

Weaknesses: 1) Since this work aims to improve the performance of VAE, it is suggested to provide visual results of image reconstruction. It is noted that the neural architecture and posterior distribution have been changed dramatically compared to most VAEs.


Review for NeurIPS paper: NVAE: A Deep Hierarchical Variational Autoencoder

Neural Information Processing Systems

All four viewers provide favorable or very favorable reviews. The reviewers point out that the clear presentation and impressive empirical results. The paper is therefore accepted for a spotlight.

  deep hierarchical variational autoencoder, neurips paper, nvae

NVAE: A Deep Hierarchical Variational Autoencoder

Neural Information Processing Systems

Normalizing flows, autoregressive models, variational autoencoders (VAEs), and deep energy-based models are among competing likelihood-based frameworks for deep generative learning. Among them, VAEs have the advantage of fast and tractable sampling and easy-to-access encoding networks. However, they are currently outperformed by other models such as normalizing flows and autoregressive models. While the majority of the research in VAEs is focused on the statistical challenges, we explore the orthogonal direction of carefully designing neural architectures for hierarchical VAEs. We propose Nouveau VAE (NVAE), a deep hierarchical VAE built for image generation using depth-wise separable convolutions and batch normalization.