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Symmetric Variational Autoencoder and Connections to Adversarial Learning

机译:对称变分性自动化器和与对抗学习的连接

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A new form of the variational autoencoder (VAE) is proposed, based on the symmetric Kullback- Leibler divergence. It is demonstrated that learn- ing of the resulting symmetric VAE (sVAE) has close connections to previously developed adversarial-learning methods. This relationship helps unify the previously distinct techniques of VAE and adversarially learning, and provides insights that allow us to ameliorate shortcomings with some previously developed adversarial methods. In addition to an analysis that motivates and explains the sVAE, an extensive set of experiments validate the utility of the approach.
机译:提出了一种基于对称kullback-Leibler发散的改变自动置镜(VAE)的新形式。证明所得对称VAE(SVAE)的学习具有与先前显影的对抗性学习方法密切的连接。这种关系有助于统一vae和普遍地学习的先前不同的技术,并提供洞察力,让我们利用一些以前开发的对抗方法改善缺点。除了促进和解释SVAE的分析外,一组广泛的实验验证了方法的效用。

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