School of Electronics Engineering and Computer Science, Peking University, Beijing 100871, China.
Key Laboratory of Machine Perception, Ministry of Education, Peking University, Beijing 100871, China.
Sensors (Basel). 2020 Dec 19;20(24):7307. doi: 10.3390/s20247307.
Assessing the health condition has a wide range of applications in healthcare, military, aerospace, and industrial fields. Nevertheless, traditional feature-engineered techniques involve manual feature extraction, which are too cumbersome to adapt to the changes caused by the development of sensor network technology. Recently, deep-learning-based methods have achieved initial success in health-condition assessment research, but insufficient considerations for problems such as class skewness, noisy segments, and result interpretability make it difficult to apply them to real-world applications. In this paper, we propose a K-margin-based Interpretable Learning approach for health-condition assessment. In detail, a skewness-aware RCR-Net model is employed to handle problems of class skewness. Furthermore, we present a diagnosis model based on K-margin to automatically handle noisy segments by naturally exploiting expected consistency among the segments associated with each record. Additionally, a knowledge-directed interpretation method is presented to learn domain knowledge-level features automatically without the help of human experts which can be used as an interpretable decision-making basis. Finally, through experimental validation in the field of both medical and aerospace, the proposed method has a better generality and high efficiency with 0.7974 and 0.8005 F1 scores, which outperform all state-of-the-art deep learning methods for health-condition assessment task by 3.30% and 2.99%, respectively.
评估健康状况在医疗、军事、航空航天和工业领域有广泛的应用。然而,传统的基于特征工程的技术涉及到手动特征提取,这对于适应传感器网络技术发展所带来的变化来说过于繁琐。最近,基于深度学习的方法在健康状况评估研究中取得了初步成功,但对类偏斜、噪声段和结果可解释性等问题的考虑不足,使得它们难以应用于实际应用。在本文中,我们提出了一种基于 K-边缘的可解释学习方法来进行健康状况评估。具体来说,我们采用了一种具有类偏斜意识的 RCR-Net 模型来处理类偏斜问题。此外,我们提出了一种基于 K-边缘的诊断模型,通过自然利用每个记录相关的各段之间的预期一致性来自动处理噪声段。此外,还提出了一种知识指导的解释方法,可以在没有人类专家帮助的情况下自动学习领域知识级别的特征,作为可解释的决策基础。最后,通过在医疗和航空航天领域的实验验证,所提出的方法具有更好的通用性和高效率,在医疗和航空航天领域的 F1 得分为 0.7974 和 0.8005,分别比最先进的健康状况评估任务的深度学习方法高出 3.30%和 2.99%。