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Bayes-Factor-VAE: Hierarchical Bayesian Deep Auto-Encoder Models for Factor Disentanglement

机译:贝叶斯因子 - VAE:分层贝叶斯深度自动编码器模型,用于因子解剖学

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We propose a family of novel hierarchical Bayesian deep auto-encoder models capable of identifying disentangled factors of variability in data. While many recent attempts at factor disentanglement have focused on sophisticated learning objectives within the VAE framework, their choice of a standard normal as the latent factor prior is both suboptimal and detrimental to performance. Our key observation is that the disentangled latent variables responsible for major sources of variability, the relevant factors, can be more appropriately modeled using long-tail distributions. The typical Gaussian priors are, on the other hand, better suited for modeling of nuisance factors. Motivated by this, we extend the VAE to a hierarchical Bayesian model by introducing hyper-priors on the variances of Gaussian latent priors, mimicking an infinite mixture, while maintaining tractable learning and inference of the traditional VAEs. This analysis signifies the importance of partitioning and treating in a different manner the latent dimensions corresponding to relevant factors and nuisances. Our proposed models, dubbed Bayes-Factor-VAEs, are shown to outperform existing methods both quantitatively and qualitatively in terms of latent disentanglement across several challenging benchmark tasks.
机译:我们提出一种能够识别数据中的变异解开因素的新分层贝叶斯深自动编码器模式的家庭。虽然在因素的解开许多近期尝试集中于复杂的学习目标VAE框架内,他们的选择标准作为正常的潜在因素的前两个是次优的,也不利于性能。我们的主要发现是,负责对变异的主要来源,相关因素解开潜在变量,可以用长尾分布更适当地建模。典型的高斯先验的,而另一方面,更适合的滋扰因素建模。这个启发,我们通过引入超先验高斯潜先验的方差,模仿无限的混合物,在保持传统VAES的听话学习和推理的VAE扩展到分层贝叶斯模型。此分析表明分区和以不同的方式处理对应于相关的因素和滋扰潜尺寸的重要性。我们提出的模型,被称为贝叶斯因子VAES,被证明优于现有的方法定量和定性的潜在解开方面在几个富有挑战性的基准任务。

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