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CausalVAE: Disentangled Representation Learning via Neural ...

CausalVAE: Disentangled Representation Learning via Neural Structural Causal Models Mengyue Yang1,2 , Furui Liu1, *, Zhitang Chen1 , Xinwei Shen3 , Jianye Hao1 , Jun Wang2. 1. Noah's Ark Lab, Huawei, Shenzhen, China 2. University College London, London, United Kingdom 3. The hong kong University of Science and Technology, hong kong , China Abstract robustness against adversarial attacks as well as the explan- ability, by Learning data's latent Disentangled Representation . Learning disentanglement aims at finding a low dimen- One of the most common frameworks for Disentangled rep- sional Representation which consists of multiple explana- resentation Learning is Variational Autoencoders (VAE), a tory and generative factors of the observational data. The deep generative model trained to disentangle the underly- framework of variational autoencoder (VAE) is commonly ing explanatory factors. Disentanglement via VAE can be used to disentangle independent factors from observations.

3 The Hong Kong University of Science and Technology, Hong Kong, China ... els entailing the same joint distributions, which means that ... and design a layer containing a few non-structured nodes, representing outputs of mutually independent causal mecha-nisms [26], which contribute together to the final predictions ...

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