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On the Ability of Neural Nets to Express Distributions

机译:神经网络表达分布的能力

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Deep neural nets have caused a revolution in many classification tasks. A related ongoing revolution—also theoretically not understood—concerns their ability to serve as generative models for complicated types of data such as images and texts. These models are trained using ideas like variational autoencoders and Generative Adversarial Networks. We take a first cut at explaining the expressivity of multilayer nets by giving a sufficient criterion for a function to be approximable by a neural network with $n$ hidden layers. A key ingredient is Barron’s Theorem (Barron, 1993), which gives a Fourier criterion for approximability of a function by a neural network with 1 hidden layer. We show that a composition of $n$ functions which satisfy certain Fourier conditions (“Barron functions”) can be approximated by a $n+1$-layer neural network. For probability distributions, this translates into a criterion for a probability distribution to be approximable in Wasserstein distance—a natural metric on probability distributions—by a neural network applied to a fixed base distribution (e.g., multivariate gaussian). Building up recent lower bound work, we also give an example function that shows that composition of Barron functions is more expressive than Barron functions alone.
机译:深度神经网络在许多分类任务中引起了革命。一场正在进行的相关革命-从理论上也没有被理解-涉及到它们能否用作复杂类型的数据(如图像和文本)的生成模型的能力。这些模型是使用变式自动编码器和创生对抗网络等思想进行训练的。我们首先通过提供足够的判据来解释多层网络的可表达性,该判据为函数提供了具有$ n $隐藏层的神经网络可近似的功能。一个关键因素是巴伦定理(巴伦,1993年),它为具有1个隐藏层的神经网络提供了函数近似性的傅里叶准则。我们证明,满足某些傅立叶条件的$ n $函数的组成(“巴伦函数”)可以由$ n + 1 $层神经网络近似。对于概率分布,这转化为一个标准,即通过应用于固定基数分布(例如多元高斯)的神经网络,可以在Wasserstein距离(概率分布的自然度量)上近似概率分布。建立最近的下界工作,我们还给出了一个示例函数,该函数表明Barron函数的组合比单独的Barron函数更具表达性。

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