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Hyperparameter Importance for Image Classification by Residual Neural Networks

机译:残留神经网络在图像分类中的超参数重要性

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Residual neural networks (ResNets) are among the state-of-the-art for image classification tasks. With the advent of automated machine learning (AutoML), automated hyperparameter optimization methods are by now routinely used for tuning various network types. However, in the thriving field of deep neural networks, this progress is not yet matched by equal progress on rigorous techniques that yield information beyond performance-optimizing hyperparameter settings. In this work, we aim to answer the following question: Given a residual neural network architecture, what are generally (across datasets) its most important hyperparameters? In order to answer this question, we assembled a benchmark suite containing 10 image classification datasets. For each of these datasets, we analyze which of the hyperparameters were most influential using the functional ANOVA framework. This experiment both confirmed expected patterns, and revealed new insights. With these experimental results, we aim to form a more rigorous basis for experimentation that leads to better insight towards what hyperparameters are important to make neural networks perform well.
机译:残差神经网络(ResNets)是图像分类任务的最新技术。随着自动机器学习(AutoML)的出现,现在自动使用超参数优化方法来调整各种网络类型。但是,在深度神经网络蓬勃发展的领域中,这一进步尚未与在产生性能优化超参数设置之外的信息的严格技术上取得同样的进步相提并论。在这项工作中,我们旨在回答以下问题:给定残差神经网络体系结构,(在整个数据集中)其最重要的超参数通常是什么?为了回答这个问题,我们组装了一个包含10个图像分类数据集的基准套件。对于每个这些数据集,我们使用功能方差分析框架分析哪些超参数最有影响力。该实验既确认了预期的模式,又揭示了新的见解。借助这些实验结果,我们旨在为实验提供更严格的基础,从而更好地了解哪些超参数对于使神经网络的正常运行至关重要。

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