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Solo or Ensemble? Choosing a CNN Architecture for Melanoma Classification

机译:独奏还是合奏?选择用于黑素瘤分类的CNN架构

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Convolutional neural networks (CNNs) deliver exceptional results for computer vision, including medical image analysis. With the growing number of available architectures, picking one over another is far from obvious. Existing art suggests that, when performing transfer learning, the performance of CNN architectures on ImageNet correlates strongly with their performance on target tasks. We evaluate that claim for melanoma classification, over 9 CNNs architectures, in 5 sets of splits created on the ISIC Challenge 2017 dataset, and 3 repeated measures, resulting in 135 models. The correlations we found were, to begin with, much smaller than those reported by existing art, and disappeared altogether when we considered only the top-performing networks: uncontrolled nuisances (i.e., splits and randomness) overcome any of the analyzed factors. Whenever possible, the best approach for melanoma classification is still to create ensembles of multiple models. We compared two choices for selecting which models to ensemble: picking them at random (among a pool of high-quality ones) vs. using the validation set to determine which ones to pick first. For small ensembles, we found a slight advantage on the second approach but found that random choice was also competitive. Although our aim in this paper was not to maximize performance, we easily reached AUCs comparable to the first place on the ISIC Challenge 2017.
机译:卷积神经网络(CNN)可为计算机视觉(包括医学图像分析)提供出色的结果。随着可用架构数量的不断增加,相互之间的选择并不是一件容易的事。现有技术表明,当执行转移学习时,CNN在ImageNet上的性能与其在目标任务上的性能密切相关。我们在ISIC Challenge 2017数据集上创建的5组分割中,对9种CNN架构中的黑色素瘤分类进行了评估,并进行了3次重复测量,得出135个模型。首先,我们发现的相关性远小于现有技术所报道的相关性,并且当我们仅考虑性能最高的网络时,它们之间的相关性就完全消失了:不受控制的扰动(即分裂和随机性)克服了任何分析因素。只要有可能,黑素瘤分类的最佳方法仍然是创建多个模型的集合。我们比较了选择哪种模型进行集成的两个选择:随机(在一组高质量模型中)与使用验证集确定首先选择哪个模型。对于小型合奏,我们发现第二种方法稍有优势,但发现随机选择也具有竞争优势。尽管我们本文的目的不是最大程度地提高性能,但我们轻松达到了与《国际标准产业分类》挑战赛2017的第一名相当的AUC。

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