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Learning Hierarchical Features from Deep Generative Models

机译:从深度生成模型中学习层次结构特征

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Deep neural networks have been shown to be very successful at learning feature hierarchies in supervised learning tasks. Generative models, on the other hand, have benefited less from hierarchical models with multiple layers of latent variables. In this paper, we prove that hierarchical latent variable models do not take advantage of the hierarchical structure when trained with existing variational methods, and provide some limitations on the kind of features existing models can learn. Finally we propose an alternative architecture that do not suffer from these limitations. Our model is able to learn highly interpretable and disentangled hierarchical features on several natural image datasets with no task specific regularization or prior knowledge.
机译:事实证明,深度神经网络在监督学习任务中的特征层次结构学习中非常成功。另一方面,对于具有多层潜在变量的分层模型,生成模型的收益较少。在本文中,我们证明了当使用现有的变分方法训练时,分层的潜在变量模型没有利用分层结构,并且对现有模型可以学习的特征种类提供了一些限制。最后,我们提出一种不受这些限制的替代架构。我们的模型能够在没有特定于任务的正则化或先验知识的情况下,在几个自然图像数据集上学习高度可解释和不复杂的层次特征。

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