我的健康传感器,我的分类器——使经过训练的分类器适应未标记的最终用户数据

K. Nikolaidis, Stein Kristiansen, T. Plagemann, V. Goebel, K. Liestøl, M. Kankanhalli, G. Traaen, B. Overland, H. Akre, L. Aakerøy, S. Steinshamn
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引用次数: 0

摘要

睡眠呼吸暂停是一种常见的睡眠相关疾病,但诊断不足。在家中使用低成本传感器进行无人看管的睡眠监测可以用于状态检测,机器学习为这项任务提供了一个通用的解决方案。然而,患者特征、缺乏足够的训练数据和其他因素可能意味着训练和最终用户数据之间的领域转移,从而降低任务绩效。在这项工作中,我们解决这个问题的目的是实现个性化的基础上,病人的需求。本文提出了一种无监督域自适应(UDA)解决方案,该方案具有标记源数据不直接可用的约束。相反,提供了对源数据进行训练的分类器。我们的解决方案基于分类器信念迭代标记目标数据子区域,并从扩展的数据集中训练新的分类器。在睡眠监测数据集和各种传感器上的实验表明,我们的解决方案优于源域训练的分类器,kappa系数从0.012提高到0.242。此外,我们将我们的解决方案应用于三个完善的数据集之间的数字分类数据分析,以研究其通用性,并允许相关的工作比较。即使没有直接访问源数据,它在这些数据集中的性能也优于几种成熟的UDA方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
My Health Sensor, My Classifier – Adapting a Trained Classifier to Unlabeled End-User Data
Sleep apnea is a common yet severely under-diagnosed sleep related disorder. Unattended sleep monitoring at home with low-cost sensors can be leveraged for condition detection, and Machine Learning offers a generalized solution for this task. However, patient characteristics, lack of sufficient training data, and other factors can imply a domain shift between training and end-user data and reduced task performance. In this work, we address this issue with the aim to achieve personalization based on the patient’s needs. We present an unsupervised domain adaptation (UDA) solution with the constraint that labeled source data are not directly available. Instead, a classifier trained on the source data is provided. Our solution iteratively labels target data sub-regions based on classifier beliefs, and trains new classifiers from the expanding dataset. Experiments with sleep monitoring datasets and various sensors show that our solution outperforms the classifier trained on the source domain, with a kappa coefficient improvement from 0.012 to 0.242. Additionally, we apply our solution to digit classification DA between three well-established datasets, to investigate its generalizability, and allow for related work comparisons. Even without direct access to the source data, it outperforms several well-established UDA methods in these datasets.
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CiteScore
10.30
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