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arxiv: 2204.03731 · v1 · pith:IALBW7MTnew · submitted 2022-04-07 · 💻 cs.HC · cs.LG

GreaseVision: Rewriting the Rules of the Interface

classification 💻 cs.HC cs.LG
keywords harmsinterventionsend-usersapproachcontributiondigitalenablesframework
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Digital harms can manifest across any interface. Key problems in addressing these harms include the high individuality of harms and the fast-changing nature of digital systems. As a result, we still lack a systematic approach to study harms and produce interventions for end-users. We put forward GreaseVision, a new framework that enables end-users to collaboratively develop interventions against harms in software using a no-code approach and recent advances in few-shot machine learning. The contribution of the framework and tool allow individual end-users to study their usage history and create personalized interventions. Our contribution also enables researchers to study the distribution of harms and interventions at scale.

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