Abstract

Mobile health monitoring plays a central role in the future of cyber physical systems (CPS) for healthcare applications. Such monitoring systems need to process user data accurately. Unlike in other human-centered CPS, in healthcare CPS, the user functions in multiple roles all at the same time: as an operator, an actuator, the physical environment and, most importantly, the target that needs to be monitored in the process. Therefore, mobile health CPS devices face highly dynamic settings generally, and accuracy of the machine learning models the devices employ may drop dramatically every time a change in setting happens. Novel learning architecture that specifically address challenges associated with dynamic environments are therefore needed. Using active learning and transfer learning as organizing principles, we propose a collaborative multiple-expert architecture and accompanying algorithms for the design of machine learning models that autonomously adapt to a new configuration, context, or user need. Specifically, our architecture and its constituent algorithms are designed to manage heterogeneous knowledge sources or experts with varying levels of confidence and type while minimizing adaptation cost. Additionally, our framework incorporates a mechanism for collaboration among experts to enrich their knowledge, which in turn decreases both cost and uncertainty of data labeling in future steps. We evaluate the efficacy of the architecture using two publicly available human activity datasets. We attain activity recognition accuracy of over (for the first dataset) and (for the second dataset) by labeling only of unlabeled data.

Highlights

  • Mobile health (M-health), which the World Health Organization describes as “medical and public health practice supported by mobile devices” [1], is permeating modern healthcare

  • Extending our preliminary work in [26], in this paper, we develop a cost-effective multi-expert active learning (Co-MEAL) architecture for mobile health monitoring systems

  • We explored the use of active learning and transfer learning for reconfiguration of mobile health monitoring systems

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Summary

Introduction

Mobile health (M-health), which the World Health Organization describes as “medical and public health practice supported by mobile devices” [1], is permeating modern healthcare. Patients/users use mobile devices to track their own health-data, access clinical records through online portals, and provide feedback to healthcare providers (e.g., the form of daily questionnaires) [3,5,6,7,8]. This makes mobile devices a powerful gateway for providing effective services to a variety of population groups and especially the elderly, patients with chronic conditions, and those needing constant monitoring [9,10,11,12,13,14]. In their work samples are selected in the active learning phase without an effective query strategy

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