神经网络的改进Bregman训练

Xiaoyu Wang, M. Benning
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引用次数: 3

摘要

我们引入了一种新的数学公式,用于训练具有(可能不光滑的)近端映射作为激活函数的前馈神经网络。这个公式是基于布雷格曼距离的,一个关键的优点是它对网络参数的偏导数不需要计算网络激活函数的导数。我们建议使用利用新公式的特定结构的非光滑一阶优化方法,而不是使用一阶优化方法和反向传播的组合来估计参数(这是最先进的)。我们给出了几个数值结果,表明与更传统的训练框架相比,这些训练方法可以同样好甚至更适合训练基于神经网络的分类器和(去噪)带有稀疏编码的自编码器。
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Lifted Bregman Training of Neural Networks
We introduce a novel mathematical formulation for the training of feed-forward neural networks with (potentially non-smooth) proximal maps as activation functions. This formulation is based on Bregman distances and a key advantage is that its partial derivatives with respect to the network's parameters do not require the computation of derivatives of the network's activation functions. Instead of estimating the parameters with a combination of first-order optimisation method and back-propagation (as is the state-of-the-art), we propose the use of non-smooth first-order optimisation methods that exploit the specific structure of the novel formulation. We present several numerical results that demonstrate that these training approaches can be equally well or even better suited for the training of neural network-based classifiers and (denoising) autoencoders with sparse coding compared to more conventional training frameworks.
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