Abstract

Self-tracking with wearable devices and mobile applications is a popular practice that relies on automated data collection and algorithm-driven analytics. Initially designed as a tool for personal use, a variety of public and corporate actors such as commercial organizations and insurance companies now make use of self-tracking data. Associated social risks such as privacy violations or measurement inaccuracies have been theoretically derived, although empirical evidence remains sparse. This article conceptualizes self-tracking as algorithmic-selection applications and empirically examines users’ risk awareness related to self-tracking applications as well as coping strategies as an option to deal with these risks. It draws on representative survey data collected in Switzerland. The results reveal that Swiss self-trackers’ awareness of risks related to the applications they use is generally low and only a small number of those who self-track apply coping strategies. We further find only a weak association between risk awareness and the application of coping strategies. This points to a cost-benefit calculation when deciding how to respond to perceived risks, a behavior explained as a privacy calculus in extant literature. The widespread willingness to pass on personal data to insurance companies despite associated risks provides further evidence for this interpretation. The conclusions—made even more pertinent by the potential of wearables’ track-and-trace systems and state-level health provision—raise questions about technical safeguarding, data and health literacies, and governance mechanisms that might be necessary considering the further popularization of self-tracking for health.

Highlights

  • Algorithms are shaping many domains of our datafied lives, from the curation of news content to recommen‐ dations for what to buy

  • To answer RQ1, we address how widespread the awareness of risks associated with self‐tracking appli‐ cations and the employment of coping strategies is

  • This article makes two central contributions: On the con‐ ceptual level, we have elaborated on the functionality of self‐tracking as algorithmic‐selection applications and discussed related risks and coping strategies

Read more

Summary

Introduction

Algorithms are shaping many domains of our datafied lives, from the curation of news content to recommen‐ dations for what to buy. Self‐tracking for health is no exception: this digital variant of self‐surveillance is per‐ formed with the help of wearable devices (e.g., sports bracelets, smart jewelry) and mobile applications. It typ‐ ically involves continuous data collection, storage, and analysis, which results in algorithmically‐derived health recommendations, quasi‐human motivational commu‐ nication, and competitive benchmarking against peers. While self‐trackers measure various aspects of their lives, the central focus of this article is on health, fitness, and. The market of related mobile applications is highly concentrated: From more than 300,000 healthcare apps available, 36 account for more than half of all downloads (esti‐ mates by IMS Institute for Healthcare Informatics, 2015). The market for wearables is split between five dominant players—Apple, Xiaomi, Fitbit, Samsung, and Huawei—accounting for nearly two‐thirds of devices sold (Statista, 2020)

Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call