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arxiv: 2605.14999 · v1 · pith:VAL5X2P5new · submitted 2026-05-14 · 💻 cs.HC · cs.AI· cs.CY

Towards Gaze-Informed AI Disclosure Interfaces: Eye-Tracking Attentional and Cognitive Load While Reading AI-Assisted News

classification 💻 cs.HC cs.AIcs.CY
keywords disclosuresattentionalreadersai-useburdencognitivedetaileddisclosure
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As generative AI becomes increasingly integrated into journalism, designing effective AI-use disclosures that inform readers without imposing unnecessary burden is a key challenge. While prior research has primarily focused on trust and credibility, the impact of disclosures on readers' attentional and cognitive load remains underexplored. To address this gap, we conducted a $3\times2\times2$ mixed factorial study manipulating the level of AI-use disclosure detail (none, one-line, detailed), news type (politics, lifestyle), and role of AI (editing, partial content generation), measuring load via NASA-TLX and eye-tracking. Our results reveal a significant attentional cost: one-line disclosures resulted in significantly higher fixation durations and saccade counts, particularly for AI-edited content. Detailed disclosures did not impose additional burden. Drawing on Information-Gap Theory, we argue that brief labels may trigger increased visual scrutiny by alerting readers to AI use without providing enough information. NASA-TLX scores and pupil diameter showed no significant differences across conditions, suggesting that AI-use disclosures do not impose cognitive burden regardless of the detail level. Interview insights contextualize these findings and reveal a strong preference for detailed or ``detail-on-demand'' designs. Our findings inform the design of gaze-informed adaptive disclosure interfaces that dynamically adjust transparency levels based on readers' attentional patterns and news context.

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  1. Designed by Journalists, but Is It for Readers? Rethinking AI Disclosures and Transparency in News

    cs.CY 2026-06 unverdicted novelty 5.0

    User study finds detailed AI disclosures in news reduce trust and one-line labels leave gaps, with readers proposing agency-focused alternatives like detail-on-demand and proportional visualizations.