How Transparency Labels & Accuracy Affect Trust & Engagement on Social Media Content

Thesis title: How Transparency Labels & Accuracy Affect Trust & Engagement on Social Media Content
Author: Mohana, Rami
Thesis type: Diploma thesis
Supervisor: Pavlíček, Antonín
Opponents: Sudzina, František
Thesis language: English
Abstract:
This master's thesis examines how transparency labels and factual accuracy influence user trust and engagement with social media content. It uses a three-study mixed-method design: an observational analysis of 200 Reddit posts, a survey experiment with 341 valid respondents, and 15 semi-structured interviews. The findings show that users do not react to AI involvement in a simple AI-versus-human way. Human-created content received the strongest trust-related and behavioural evaluations, fully AI-generated content received the weakest evaluations, and AI-assisted content occupied a more moderate position close to the no-label condition. The thesis also shows that factual accuracy, content context, media format, and perceived human oversight strongly shape how users judge and engage with labelled content. Overall, the thesis argues that transparency labels should be more precise and should explain the degree and form of AI involvement rather than only stating that AI was used.
Keywords: AI-generated content; Trust and credibility; User engagement; Social media contexts; Content provenance; Transparency labels; Factual accuracy
Thesis title: How Transparency Labels & Accuracy Affect Trust & Engagement on Social Media Content
Author: Mohana, Rami
Thesis type: Diplomová práce
Supervisor: Pavlíček, Antonín
Opponents: Sudzina, František
Thesis language: English
Abstract:
This master's thesis examines how transparency labels and factual accuracy influence user trust and engagement with social media content. It uses a three-study mixed-method design: an observational analysis of 200 Reddit posts, a survey experiment with 341 valid respondents, and 15 semi-structured interviews. The findings show that users do not react to AI involvement in a simple AI-versus-human way. Human-created content received the strongest trust-related and behavioural evaluations, fully AI-generated content received the weakest evaluations, and AI-assisted content occupied a more moderate position close to the no-label condition. The thesis also shows that factual accuracy, content context, media format, and perceived human oversight strongly shape how users judge and engage with labelled content. Overall, the thesis argues that transparency labels should be more precise and should explain the degree and form of AI involvement rather than only stating that AI was used.
Keywords: User engagement; Social media contexts; Content provenance; Trust and credibility; AI-generated content; Transparency labels; Factual accuracy

Information about study

Study programme: Information Systems Management/Data and Business
Type of study programme: Magisterský studijní program
Assigned degree: Ing.
Institutions assigning academic degree: Vysoká škola ekonomická v Praze
Faculty: Faculty of Informatics and Statistics
Department: Department of Systems Analysis

Information on submission and defense

Date of assignment: 15. 10. 2025
Date of submission: 24. 6. 2026
Date of defense: 2026

Files for download

The files will be available after the defense of the thesis.

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