论文标题
那太难了吗?估计人类分类难度
Was that so hard? Estimating human classification difficulty
论文作者
论文摘要
当医生接受诊断特定疾病的培训时,出现病例时,他们的学习速度更快,以增加难度。这创造了自动估计医生对给定情况进行分类的困难。在本文中,我们介绍了估计医生诊断以医学形象为代表的案例的方法,这是当地面真理难度可用于培训时,何时没有。我们的方法基于深度度量学习获得的嵌入。此外,我们引入了一种实用方法,可以使用自我评估的确定性在数据集中为每个图像案例获得地面真相的难度。我们将方法应用于两个不同的医学数据集,从而实现了高肯德尔等级相关系数,这表明我们的问题和数据的差距很大。
When doctors are trained to diagnose a specific disease, they learn faster when presented with cases in order of increasing difficulty. This creates the need for automatically estimating how difficult it is for doctors to classify a given case. In this paper, we introduce methods for estimating how hard it is for a doctor to diagnose a case represented by a medical image, both when ground truth difficulties are available for training, and when they are not. Our methods are based on embeddings obtained with deep metric learning. Additionally, we introduce a practical method for obtaining ground truth human difficulty for each image case in a dataset using self-assessed certainty. We apply our methods to two different medical datasets, achieving high Kendall rank correlation coefficients, showing that we outperform existing methods by a large margin on our problem and data.