Narrating Fitness: Leveraging Large Language Models for Reflective Fitness Tracker Data Interpretation

要旨

While fitness trackers generate and present quantitative data, past research suggests that users often conceptualise their wellbeing in qualitative terms. This discrepancy between numeric data and personal wellbeing perception may limit the effectiveness of personal informatics tools in encouraging meaningful engagement with one’s wellbeing. In this work, we aim to bridge the gap between raw numeric metrics and users’ qualitative perceptions of wellbeing. In an online survey with $n=273$ participants, we used step data from fitness trackers and compared three presentation formats: standard charts, qualitative descriptions generated by an LLM (Large Language Model), and a combination of both. Our findings reveal that users experienced more reflection, focused attention and reward when presented with the generated qualitative data compared to the standard charts alone. Our work demonstrates how automatically generated data descriptions can effectively complement numeric fitness data, fostering a richer, more reflective engagement with personal wellbeing information.

受賞
Honorable Mention
著者
Konstantin R.. Strömel
Osnabrück University, Osnabrück, Germany
Stanislas Henry
ENSEIRB-MATMECA Bordeaux, Bordeaux, France
Tim Johansson
Chalmers University of Technology, Gothenburg, Sweden
Jasmin Niess
University of Oslo, Oslo, Norway
Paweł W. Woźniak
Chalmers University of Technology, Gothenburg, Sweden
論文URL

doi.org/10.1145/3613904.3642032

動画

会議: CHI 2024

The ACM CHI Conference on Human Factors in Computing Systems (https://chi2024.acm.org/)

セッション: Large Language Models

316A
5 件の発表
2024-05-15 01:00:00
2024-05-15 02:20:00