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V-Awake: A Visual Analytics Approach for Correcting Sleep Predictions from Deep Learning Models

机译:V-AWAKE:一种用于校正深度学习模型的睡眠预测的视觉分析方法

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The usage of deep learning models for tagging input data has increased over the past years because of their accuracy and high-performance. A successful application is to score sleep stages. In this scenario, models are trained to predict the sleep stages of individuals. Although their predictive accuracy is high, there are still mis classifications that prevent doctors from properly diagnosing sleep-related disorders. This paper presents a system that allows users to explore the output of deep learning models in a real-life scenario to spot and analyze faulty predictions. These can be corrected by users to generate a sequence of sleep stages to be examined by doctors. Our approach addresses a real-life scenario with absence of ground truth. It differs from others in that our goal is not to improve the model itself, but to correct the predictions it provides. We demonstrate that our approach is effective in identifying faulty predictions and helping users to fix them in the proposed use case.
机译:由于其准确性和高性能,过去几年来,用于标记输入数据的深度学习模型的使用量增加。成功的应用程序是为了得分睡眠阶段。在这种情况下,培训模型以预测个人的睡眠阶段。虽然它们的预测精度很高,但仍有MIS分类,防止医生正确诊断睡眠相关的疾病。本文介绍了一个系统,允许用户在现实场景中探索深度学习模型的输出,以发现和分析错误的预测。这些可以通过用户纠正,以生成由医生检查的一系列睡眠阶段。我们的方法解决了一个真实的场景,没有地位真相。它与其他人不同,因为我们的目标不是改善模型本身,而是纠正它提供的预测。我们展示我们的方法有效地识别错误的预测,并帮助用户在所提出的用例中修复它们。

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