TY - JOUR
T1 - Safer Algorithmically-Mediated Offline Introductions
T2 - Harms and Protective Behaviors
AU - Rivera, Veronica A.
AU - Wilkinson, Daricia
AU - Augusta, Aurelia
AU - Li, Sophie
AU - Redmiles, Elissa M.
AU - Strohmayer, Angelika
N1 - Publisher Copyright:
© 2024 Copyright held by the owner/author(s).
PY - 2024/11/8
Y1 - 2024/11/8
N2 - People are increasingly introduced to each other offline thanks to online platforms that make algorithmically-mediated introductions between their users. Such platforms include dating apps (e.g., Tinder) and in-person gig work websites (e.g., TaskRabbit, Care.com). Protecting the users of these online-offline systems requires answering calls from prior work to consider ‘post-digital’ orientations of safety: shifting from traditional technological security thinking to consider algorithm-driven consequences that emerge throughout online and offline contexts rather than solely acknowledging online threats. To support post-digital safety in platforms that make algorithmically-mediated offline introductions (AMOIs), we apply a mixed-methods approach to identify the core harms that AMOI users experience, the protective safety behaviors they employ, and the prevalence of those behaviors. First, we systematically review existing work (n = 93), synthesizing the harms that threaten AMOIs and the protective behaviors people employ to combat these harms. Second, we validate prior work and fill gaps left by primarily qualitative inquiry through a survey of respondents’ definitions of safety in AMOI and the prevalence and implementation of their protective behaviors. We focus on two exemplar populations who engage in AMOIs: online daters (n = 476) and in-person gig workers (n = 451). We draw on our systematization and prevalence data to identify several directions for designers and researchers to reimagine defensive tools to support safety in AMOIs.
AB - People are increasingly introduced to each other offline thanks to online platforms that make algorithmically-mediated introductions between their users. Such platforms include dating apps (e.g., Tinder) and in-person gig work websites (e.g., TaskRabbit, Care.com). Protecting the users of these online-offline systems requires answering calls from prior work to consider ‘post-digital’ orientations of safety: shifting from traditional technological security thinking to consider algorithm-driven consequences that emerge throughout online and offline contexts rather than solely acknowledging online threats. To support post-digital safety in platforms that make algorithmically-mediated offline introductions (AMOIs), we apply a mixed-methods approach to identify the core harms that AMOI users experience, the protective safety behaviors they employ, and the prevalence of those behaviors. First, we systematically review existing work (n = 93), synthesizing the harms that threaten AMOIs and the protective behaviors people employ to combat these harms. Second, we validate prior work and fill gaps left by primarily qualitative inquiry through a survey of respondents’ definitions of safety in AMOI and the prevalence and implementation of their protective behaviors. We focus on two exemplar populations who engage in AMOIs: online daters (n = 476) and in-person gig workers (n = 451). We draw on our systematization and prevalence data to identify several directions for designers and researchers to reimagine defensive tools to support safety in AMOIs.
KW - algorithmically-mediated interactions
KW - gig work
KW - online dating
KW - safety
KW - security
KW - tech-facilitated abuse
UR - http://www.scopus.com/inward/record.url?scp=85209590358&partnerID=8YFLogxK
U2 - 10.1145/3686948
DO - 10.1145/3686948
M3 - Article
AN - SCOPUS:85209590358
SN - 2573-0142
VL - 8
JO - Proceedings of the ACM on Human-Computer Interaction
JF - Proceedings of the ACM on Human-Computer Interaction
IS - CSCW2
M1 - 409
ER -