Prediction for Retrospection: Integrating Algorithmic Stress Prediction into Personal Informatics Systems for College Students' Mental Health

  • Kim, Taewan
  • Kim, Haesoo
  • Lee, Ha Yeon
  • Goh, Hwarang
  • Abdigapporov, Shakhboz
  • 외 6명
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26
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37

초록

Refecting on stress-related data is critical in addressing one's mental health. Personal Informatics (PI) systems augmented by algorithms and sensors have become popular ways to help users collect and refect on data about stress. While prediction algorithms in the PI systems are mainly for diagnostic purposes, few studies examine how the explainability of algorithmic prediction can support user-driven self-insight. To this end, we developed MindScope, an algorithm-assisted stress management system that determines user stress levels and explains how the stress level was computed based on the user's everyday activities captured by a smartphone. In a 25-day feld study conducted with 36 college students, the prediction and explanation supported self-refection, a process to re-establish preconceptions about stress by identifying stress patterns and recalling past stress levels and patterns that led to coping planning. We discuss the implications of exploiting prediction algorithms that facilitate user-driven retrospection in PI systems.

키워드

personal informaticsmental wellbeingstres managementalgorithm experienceexplainabilityAGE-OF-ONSETSELF-REFLECTIONDISORDERS
제목
Prediction for Retrospection: Integrating Algorithmic Stress Prediction into Personal Informatics Systems for College Students' Mental Health
저자
Kim, TaewanKim, HaesooLee, Ha YeonGoh, HwarangAbdigapporov, ShakhbozJeong, MingonCho, HyunsungHan, KyungsikNoh, YoungtaeLee, Sung-JuHong, Hwajung
DOI
10.1145/3491102.3517701
발행일
2022
유형
Proceedings Paper
저널명
PROCEEDINGS OF THE 2022 CHI CONFERENCE ON HUMAN FACTORS IN COMPUTING SYSTEMS (CHI' 22)