人不在环:课程学习的难度测量的客观样本。

Zhengbo Zhou, Jun Luo, Dooman Arefan, Gene Kitamura, Shandong Wu
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引用次数: 0

摘要

课程学习是一种学习方法,它按照从简单样本到难样本的有意义的顺序训练模型。这里的一个关键是设计自动和客观的样本难度测量。在医学领域,以前的工作应用人类专家的领域知识来定性评估医学图像的分类难度,以指导课程学习,这需要额外的注释工作,依赖于主观的人类经验,并且可能会引入偏见。在这项工作中,我们提出了一种新的自动化课程学习技术,使用梯度方差(VoG)来计算样本的客观难度测量,并从X射线图像中评估其对肘部骨折分类的影响。具体来说,我们使用VoG作为一个指标,根据分类难度对每个样本进行排名,其中VoG得分高表示分类难度更大,以指导课程训练过程。我们将所提出的技术与基线(没有课程学习)进行了比较,这是一种以前使用人类对分类难度的注释的方法,以及反课程学习。我们的实验结果显示,二元和多类骨折分类任务具有可比性和更高的性能。
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Human Not in the Loop: Objective Sample Difficulty Measures for Curriculum Learning.

Curriculum learning is a learning method that trains models in a meaningful order from easier to harder samples. A key here is to devise automatic and objective difficulty measures of samples. In the medical domain, previous work applied domain knowledge from human experts to qualitatively assess classification difficulty of medical images to guide curriculum learning, which requires extra annotation efforts, relies on subjective human experience, and may introduce bias. In this work, we propose a new automated curriculum learning technique using the variance of gradients (VoG) to compute an objective difficulty measure of samples and evaluated its effects on elbow fracture classification from X-ray images. Specifically, we used VoG as a metric to rank each sample in terms of the classification difficulty, where high VoG scores indicate more difficult cases for classification, to guide the curriculum training process We compared the proposed technique to a baseline (without curriculum learning), a previous method that used human annotations on classification difficulty, and anti-curriculum learning. Our experiment results showed comparable and higher performance for the binary and multi-class bone fracture classification tasks.

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