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    A deep learning approach for recognizing activity of daily living (adl) for senior care: Exploiting interaction dependency and temporal patterns

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    Thumbnail
    Name:
    MISQuarterly_Deep_Learning_App ...
    Embargo:
    2026-06-01
    Size:
    1.581Mb
    Format:
    PDF
    Description:
    Final Published Version
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    Author
    Zhu, H.
    Samtani, S.
    Brown, R.A.
    Chen, H.
    Affiliation
    Department of Pharmacy, University of Arizona
    Department of Management Information Systems, University of Arizona
    Issue Date
    2021
    Keywords
    2D interaction kernel
    Activity of Daily Living recognition
    Convolutional neural networks
    Deep learning
    Design science
    Human-object interaction
    Sequence-to-sequence model
    
    Metadata
    Show full item record
    Publisher
    University of Minnesota
    Citation
    Zhu, H., Samtani, S., Brown, R. A., & Chen, H. (2021). A deep learning approach for recognizing activity of daily living (adl) for senior care: Exploiting interaction dependency and temporal patterns. MIS Quarterly: Management Information Systems, 45(2).
    Journal
    MIS Quarterly: Management Information Systems
    Rights
    Copyright © MIS Quarterly.
    Collection Information
    This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.
    Abstract
    Ensuring the health and safety of senior citizens who live alone is a growing societal concern. The Activity of Daily Living (ADL) approach is a common means to monitor disease progression and the ability of these individuals to care for themselves. However, the prevailing sensor-based ADL monitoring systems primarily rely on wearable motion sensors, capture insufficient information for accurate ADL recognition, and do not provide a comprehensive understanding of ADLs at different granularities. Current healthcare IS and mobile analytics research focuses on studying the system, device, and provided services, and is in need of an end-to-end solution to comprehensively recognize ADLs based on mobile sensor data. This study adopts the design science paradigm and employs advanced deep learning algorithms to develop a novel hierarchical, multiphase ADL recognition framework to model ADLs at different granularities. We propose a novel 2D interaction kernel for convolutional neural networks to leverage interactions between human and object motion sensors. We rigorously evaluate each proposed module and the entire framework against state-of-the-art benchmarks (e.g., support vector machines, DeepConvLSTM, hidden Markov models, and topic-modeling-based ADLR) on two real-life motion sensor datasets that consist of ADLs at varying granularities: Opportunity and INTER. Results and a case study demonstrate that our framework can recognize ADLs at different levels more accurately. We discuss how stakeholders can further benefit from our proposed framework. Beyond demonstrating practical utility, we discuss contributions to the IS knowledge base for future design science-based cybersecurity, healthcare, and mobile analytics applications.
    Note
    60 month embargo; published: 01 June 2021
    ISSN
    0276-7783
    DOI
    10.25300/MISQ/2021/15574
    Version
    Final published version
    ae974a485f413a2113503eed53cd6c53
    10.25300/MISQ/2021/15574
    Scopus Count
    Collections
    UA Faculty Publications

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