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GLOBEM: Cross-Dataset Generalization of Longitudinal Human Behavior Modeling

Published: 11 January 2023 Publication History

Abstract

There is a growing body of research revealing that longitudinal passive sensing data from smartphones and wearable devices can capture daily behavior signals for human behavior modeling, such as depression detection. Most prior studies build and evaluate machine learning models using data collected from a single population. However, to ensure that a behavior model can work for a larger group of users, its generalizability needs to be verified on multiple datasets from different populations. We present the first work evaluating cross-dataset generalizability of longitudinal behavior models, using depression detection as an application. We collect multiple longitudinal passive mobile sensing datasets with over 500 users from two institutes over a two-year span, leading to four institute-year datasets. Using the datasets, we closely re-implement and evaluated nine prior depression detection algorithms. Our experiment reveals the lack of model generalizability of these methods. We also implement eight recently popular domain generalization algorithms from the machine learning community. Our results indicate that these methods also do not generalize well on our datasets, with barely any advantage over the naive baseline of guessing the majority. We then present two new algorithms with better generalizability. Our new algorithm, Reorder, significantly and consistently outperforms existing methods on most cross-dataset generalization setups. However, the overall advantage is incremental and still has great room for improvement. Our analysis reveals that the individual differences (both within and between populations) may play the most important role in the cross-dataset generalization challenge. Finally, we provide an open-source benchmark platform GLOBEM- short for Generalization of Longitudinal BEhavior Modeling - to consolidate all 19 algorithms. GLOBEM can support researchers in using, developing, and evaluating different longitudinal behavior modeling methods. We call for researchers' attention to model generalizability evaluation for future longitudinal human behavior modeling studies.

Supplementary Material

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Supplemental movie, appendix, image and software files for, GLOBEM: Cross-Dataset Generalization of Longitudinal Human Behavior Modeling

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  1. GLOBEM: Cross-Dataset Generalization of Longitudinal Human Behavior Modeling

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      cover image Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
      Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies  Volume 6, Issue 4
      December 2022
      1534 pages
      EISSN:2474-9567
      DOI:10.1145/3580286
      Issue’s Table of Contents
      This work is licensed under a Creative Commons Attribution International 4.0 License.

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      Association for Computing Machinery

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      Publication History

      Published: 11 January 2023
      Published in IMWUT Volume 6, Issue 4

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      Author Tags

      1. Behavior Modeling
      2. Generalizability
      3. Passive Sensing

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      • Refereed

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      • University of Washington
      • Google
      • the National Science Foundation
      • the National Institute on Disability, Independent Living and Rehabilitation Research
      • Samsung Research America

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