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The Hessian Penalty: A Weak Prior for Unsupervised Disentanglement

机译:黑森州的惩罚:无监督的解剖学之前是一个弱点

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Existing disentanglement methods for deep generative models rely on hand-picked priors and complex encoder-based architectures. In this paper, we propose the Hessian Penally, a simple regularization term that encourages the Hessian of a generative model with respect to its input to be diagonal. We introduce a model-agnostic, unbiased stochastic approximation of this term based on Hutchinson's estimator to compute it efficiently during training. Our method can be applied to a wide range of deep generators with just a few lines of code. We show that training with the Hessian Penalty often causes axis-aligned disentanglement to emerge in latent space when applied to ProGAN on several datasets. Additionally, we use our regularization term to identify interpretable directions in BigGAN's latent space in an unsupervised fashion. Finally, we provide empirical evidence that the Hessian Penalty encourages substantial shrinkage when applied to over-parameterized latent spaces.
机译:深度生成模型的现有解剖方法依赖于手动采摘的前瞻和复杂的基于编码器的体系结构。在本文中,我们提出了Hessian,这是一个简单的正则化术语,鼓励关于其输入到对角线的生成模型的Hessian。我们介绍了基于Hutchinson估计器的本项的模型 - 不偏不倚的随机近似,以在训练期间有效地计算它。我们的方法可以应用于各种深度发电机,只需几行代码。我们展示了赫森斯罚球的培训往往会导致轴对齐的解剖学在几个数据集上应用于Progan时潜在的空间。此外,我们使用我们的正则化术语以无监督的方式识别Biggan的潜在空间中的可解释方向。最后,我们提供了经验证据表明赫森斯罚款鼓励适用于过度参数化潜在空间时的大量收缩。

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