Publication:
Data sensemaking in self-tracking: towards a new generation of self-tracking tools

Placeholder

School / College / Institute

Program

KU-Authors

KU Authors

Co-Authors

Karahanoğlu, Armağan

Publication Date

Language

Embargo Status

Journal Title

Journal ISSN

Volume Title

Alternative Title

Abstract

Human-Computer Interaction (HCI) researchers have been increasingly interested in investigating self-trackers’ experience with self-tracking tools (STT) to get meaningful insights from their data. However, the literature lacks a coherent, integrated and dedicated source on designing tools that support self-trackers’ sensemaking practices. To address this, we carried out a systematic literature review by synthesizing the findings of 91 articles published before 2021 in HCI literature. We identified four data sensemaking modes that self-trackers go through (i.e., self-calibration, data augmentation, data handling, and realization). We also identified four design implications for designing self-tracking tools that support self-trackers’ data sensemaking practices (i.e., customized tracking experience, guided sensemaking, collaborative sensemaking, and learning sensemaking through self-experimentation). We provide a research agenda with nine directions for advancing HCI studies on data sensemaking practices. With these contributions, we created an analytical information source that could guide designers and researchers in understanding, studying, and designing for self-trackers’ data sensemaking practices. © 2022 Taylor & Francis Group, LLC.

Source

Publisher

Taylor and Francis Ltd.

Subject

Computer science, Interdisciplinary applications, Green and sustainable science and technology, Social sciences

Citation

Has Part

Source

International Journal of Human-Computer Interaction

Book Series Title

Edition

DOI

10.1080/10447318.2022.2075637

item.page.datauri

Link

Rights

Copyrights Note

Endorsement

Review

Supplemented By

Referenced By

0

Views

0

Downloads

View PlumX Details