Biased by Design: Leveraging Inherent AI Biases to Enhance Critical Thinking of News Readers
Biased by Design: Leveraging Inherent AI Biases to Enhance Critical Thinking of News Readers
This paper explores the design of a propaganda detection tool using Large Language Models (LLMs). Acknowledging the inherent biases in AI models, especially in political contexts, we investigate how these biases might be leveraged to enhance critical thinking in news consumption. Countering the typical view of AI biases as detrimental, our research proposes strategies of user choice and personalization in response to a user's political stance, applying psychological concepts of confirmation bias and cognitive dissonance. We present findings from a qualitative user study, offering insights and design recommendations (bias awareness, personalization and choice, and gradual introduction of diverse perspectives) for AI tools in propaganda detection.
Liudmila Zavolokina、Kilian Sprenkamp、Zoya Katashinskaya、Daniel Gordon Jones
计算技术、计算机技术政治理论世界政治
Liudmila Zavolokina,Kilian Sprenkamp,Zoya Katashinskaya,Daniel Gordon Jones.Biased by Design: Leveraging Inherent AI Biases to Enhance Critical Thinking of News Readers[EB/OL].(2025-04-20)[2025-06-29].https://arxiv.org/abs/2504.14522.点此复制
评论