Authors
Xuhai Xu, Xin Liu, Han Zhang, Weichen Wang, Subigya Nepal, Yasaman Sefidgar, Woosuk Seo, Kevin S Kuehn, Jeremy F Huckins, Margaret E Morris, Paula S Nurius, Evea Riskin, Shwetak Patel, Tim Althoff, Andrew Campbell, Anind K Dey, Jennifer Mankoff
Publication date
2023
Journal
🏆 Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Volume
6
Issue
4
Description
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 …
Total citations
20222023202411731
Scholar articles
X Xu, X Liu, H Zhang, W Wang, S Nepal, Y Sefidgar… - Proceedings of the ACM on Interactive, Mobile …, 2023
X Xu, X Liu, H Zhang, W Wang - Kevin S Kuehn, Jeremy Huckins, Margaret E Morris …, 2022