论文标题
使用训练不足的深层合奏在极端标签噪声下学习
Using Under-trained Deep Ensembles to Learn Under Extreme Label Noise
论文作者
论文摘要
不当或错误的标签可能会妨碍可靠的监督学习概括。这可能会带来负面后果,尤其是对于医疗保健等关键领域。我们提出了一种基于训练不足的深层合奏,在极端标签噪声下学习一种有效的新方法。每个合奏成员都经过培训的培训,以获取决策边界分离的一般概述,而无需关注潜在的错误细节。合并的累积知识被组合在一起以形成新标签,这比原始标签决定了更好的类别分离。尽管有标签噪声,但还使用这些标签训练了一种新型号,以可靠地概括。我们专注于医疗保健环境,并广泛评估我们对睡眠呼吸暂停检测任务的方法。为了与相关工作进行比较,我们还评估了数字识别的任务。在我们的实验中,对于数字分类的任务,我们观察到准确性从6.7 \%最高到49.3 \%,从0.02到0.55,对于睡眠呼吸暂停检测任务。
Improper or erroneous labelling can pose a hindrance to reliable generalization for supervised learning. This can have negative consequences, especially for critical fields such as healthcare. We propose an effective new approach for learning under extreme label noise, based on under-trained deep ensembles. Each ensemble member is trained with a subset of the training data, to acquire a general overview of the decision boundary separation, without focusing on potentially erroneous details. The accumulated knowledge of the ensemble is combined to form new labels, that determine a better class separation than the original labels. A new model is trained with these labels to generalize reliably despite the label noise. We focus on a healthcare setting and extensively evaluate our approach on the task of sleep apnea detection. For comparison with related work, we additionally evaluate on the task of digit recognition. In our experiments, we observed performance improvement in accuracy from 6.7\% up-to 49.3\% for the task of digit classification and in kappa from 0.02 up-to 0.55 for the task of sleep apnea detection.