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On the interplay of network structure and gradient convergence in deep learning

机译:论网络结构与深度学习中梯度融合的相互作用

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The regularization and output consistency behavior of dropout and layer-wise pretraining for learning deep networks have been fairly well studied. However, our understanding of how the asymptotic convergence of backpropagation in deep architectures is related to the structural properties of the network and other design choices (like denoising and dropout rate) is less clear at this time. An interesting question one may ask is whether the network architecture and input data statistics may guide the choices of learning parameters and vice versa. In this work, we explore the association between such structural, distributional and learnability aspects vis-a?-vis their interaction with parameter convergence rates. We present a framework to address these questions based on convergence of backpropagation for general nonconvex objectives using first-order information. This analysis suggests an interesting relationship between feature denoising and dropout. Building upon these results, we obtain a setup that provides systematic guidance regarding the choice of learning parameters and network sizes that achieve a certain level of convergence (in the optimization sense) often mediated by statistical attributes of the inputs. Our results are supported by a set of experimental evaluations as well as independent empirical observations reported by other groups.
机译:学习深度网络的辍学和层面预先估算的正规化和输出一致性是相当得很好的。然而,我们了解深层架构中的渐近融合的渐近收敛如何与网络的结构性和其他设计选择(如去噪和辍学率)有关。一个有趣的问题可能会询问是网络架构和输入数据统计信息是否可以指导学习参数的选择,反之亦然。在这项工作中,我们探讨了这种结构,分布和可读性方面之间的关联 - a? - 与参数收敛速率的相互作用。我们介绍了一个框架,根据使用一阶信息的常规非核化目标的BackPropation收敛来解决这些问题。该分析表明特征去噪与辍学之间的有趣关系。构建这些结果,我们获得了一个设置,提供有关学习参数的选择和网络尺寸的系统指导,该规模达到了一定程度的收敛程度(在优化意义上)通常由输入的统计属性介导。我们的结果得到了一套实验评估,以及其他群体报告的独立实证观察。

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