Agency Among Agents: Designing with Hypertextual Friction in the Algorithmic Web
- URL: http://arxiv.org/abs/2507.23585v1
- Date: Thu, 31 Jul 2025 14:18:28 GMT
- Title: Agency Among Agents: Designing with Hypertextual Friction in the Algorithmic Web
- Authors: Sophia Liu, Shm Garanganao Almeda,
- Abstract summary: We show that hypertext systems emphasize provenance, associative thinking, and user-driven meaning-making.<n>We show that algorithmic systems tend to obscure process and flatten participation.
- Score: 0.29465623430708904
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Today's algorithm-driven interfaces, from recommendation feeds to GenAI tools, often prioritize engagement and efficiency at the expense of user agency. As systems take on more decision-making, users have less control over what they see and how meaning or relationships between content are constructed. This paper introduces "Hypertextual Friction," a conceptual design stance that repositions classical hypertext principles--friction, traceability, and structure--as actionable values for reclaiming agency in algorithmically mediated environments. Through a comparative analysis of real-world interfaces--Wikipedia vs. Instagram Explore, and Are.na vs. GenAI image tools--we examine how different systems structure user experience, navigation, and authorship. We show that hypertext systems emphasize provenance, associative thinking, and user-driven meaning-making, while algorithmic systems tend to obscure process and flatten participation. We contribute: (1) a comparative analysis of how interface structures shape agency in user-driven versus agent-driven systems, and (2) a conceptual stance that offers hypertextual values as design commitments for reclaiming agency in an increasingly algorithmic web.
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