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On Role and Location of Normalization before Model-based Data Augmentation in Residual Blocks for Classification Tasks

机译:基于模型的数据增强在分类任务残差块中标准化之前的作用和位置

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Regularization is crucial to the success of many practical deep learning models, in particular in frequent scenarios where there are only a few to a moderate number of accessible training samples. In addition to weight decay, noise injection and dropout, regularization based on multi-branch architectures, such as Shake-Shake regularization, has been proven successful in many applications and attracted more and more attention. However, beyond model-based representation augmentation, it is unclear how Shake-Shake regularization helps to provide further improvement on classification tasks, let alone the baffling interaction between batch normalization and shaking. In this work, we present our investigation on Shake-Shake regularization. One of our findings illustrates the phenomenon that batch normalization in residual blocks is indispensable when shaking is applied to model branches, along with which we also empirically demonstrate the most effective location to place a batch normalization layer in a shaking regularized residual block. Based on these findings, we believe our work is beneficial to future studies on the research topic of refining control for model-based representation augmentation.
机译:正则化对于许多实用的深度学习模型的成功至关重要,特别是在频繁的场景中,只有少数到中等数量的可访问训练样本。除了权重衰减,噪声注入和衰减之外,基于多分支架构的正则化(例如Shake-Shake正则化)已在许多应用中被证明是成功的,并引起了越来越多的关注。但是,除了基于模型的表示增强之外,还不清楚Shake-Shake正则化如何帮助进一步改进分类任务,更不用说批处理规范化和抖动之间的莫名其妙的交互作用了。在这项工作中,我们提出对“摇一摇”正则化的调查。我们的发现之一表明了以下现象:当将抖动应用于模型分支时,残差块中的批次归一化是必不可少的,与此同时,我们还凭经验证明了将批次归一化层放置在抖动正则化残差块中的最有效位置。基于这些发现,我们认为我们的工作对基于模型的表示增强的精炼控制这一研究主题的未来研究是有益的。

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