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Improving activity classification for health applications on mobile devices using active and semi-supervised learning

机译:使用主动和半监督学习改善移动设备上健康应用程序的活动分类

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Mobile phones' increasing ubiquity has created many opportunities for personal context sensing. Personal activity is an important part of a user's context, and automatically recognizing it is vital for health and fitness monitoring applications. Recording a stream of activity data enables monitoring patients with chronic conditions affecting ambulation and motion, as well as those undergoing rehabilitation treatments. Modern mobile phones are powerful enough to perform activity classification in real time, but they typically use a static classifier that is trained in advance or require the user to manually add training data after the application is on his/her device. This paper investigates ways of automatically augmenting activity classifiers after they are deployed in an application. It compares active learning and three different semi-supervised learning methods, self-learning, En-Co-Training, and democratic co-learning, to determine which show promise for this purpose. The results show that active learning, En-Co-Training, and democratic co-learning perform well when the initial classifier's accuracy is low (75–80%). When the initial accuracy is already high (90%), these methods are no longer effective, but they do not hurt the accuracy either. Overall, active learning gave the highest improvement, but democratic co-learning was almost as good and does not require user interaction. Thus, democratic co-learning would be the best choice for most applications, since it would significantly increase the accuracy for initial classifiers that performed poorly.
机译:手机的日益普及为个人情境感知创造了许多机会。个人活动是用户上下文的重要组成部分,并且自动识别它对于健康和健身监视应用程序至关重要。记录活动数据流可以监视患有影响步行和运动的慢性病的患者以及接受康复治疗的患者。现代手机功能强大,可以实时执行活动分类,但是它们通常使用预先经过训练的静态分类器,或者要求用户在应用程序在其设备上后手动添加训练数据。本文研究了将活动分类器部署到应用程序中后自动对其进行扩充的方法。它比较了主动学习和三种不同的半监督学习方法(自学,En-Co-Training和民主共学习),以确定哪种方法有望实现此目的。结果表明,当初始分类器的准确性较低(75-80%)时,主动学习,En-Co-Training和民主共同学习表现良好。当初始精度已经很高(90%)时,这些方法将不再有效,但它们也不会损害精度。总体而言,主动学习取得了最大的进步,但是民主共学习几乎一样好,不需要用户交互。因此,民主共学习将是大多数应用程序的最佳选择,因为它将大大提高表现不佳的初始分类器的准确性。

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