Seeing and Hearing: The Influence of AI-Generated Political Media on Public Trust and Intentions
Date
2025-04-14
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Abstract
Artificial Intelligence (AI) is reshaping political communication through deepfakes, synthetic voices, and manipulated images. While promising for engagement, these media also raise concerns around misinformation and public trust. This study experimentally examines how different AI-generated media formats (image, video, audio) and realism levels affect trust and political decision-making. Results from Linear Mixed Models and Natural Language Processing reveal that audio content is perceived as more trustworthy than video or images, supporting cognitive load theory. High realism enhances trustworthiness, while increased excitement may reduce skepticism, making audiences more persuadable. Though generalizability is limited by the controlled setting, the findings offer novel insight into how AI-generated political content influences perception and behavior. This research contributes to political communication and media psychology by highlighting both the persuasive power and ethical risks of AI in digital politics.
Description
This thesis explores how AI-generated political content—such as deepfake videos, synthetic voices, and manipulated images—affects public trust and political decision-making. Using experimental methods and Natural Language Processing, it compares the influence of different media types and realism levels. The findings offer insights into trust, excitement, and cognitive processing in digital political communication.
Keywords
AI-generated content, Political Communication, Deepfake Videos, Synthetic Media, Responsible AI, Political Trust