The Impact of Artificial Intelligence on Human Thought
- URL: http://arxiv.org/abs/2508.16628v1
- Date: Fri, 15 Aug 2025 11:25:05 GMT
- Title: The Impact of Artificial Intelligence on Human Thought
- Authors: Rénald Gesnot,
- Abstract summary: This research paper examines, from a multidimensional perspective, how AI is transforming human thought.<n>It highlights a cognitive offloading effect: the externalization of mental functions to AI can reduce intellectual engagement and weaken critical thinking.<n>On the social level, algorithmic personalization creates filter bubbles that limit the diversity of opinions and can lead to the homogenization of thought and polarization.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This research paper examines, from a multidimensional perspective (cognitive, social, ethical, and philosophical), how AI is transforming human thought. It highlights a cognitive offloading effect: the externalization of mental functions to AI can reduce intellectual engagement and weaken critical thinking. On the social level, algorithmic personalization creates filter bubbles that limit the diversity of opinions and can lead to the homogenization of thought and polarization. This research also describes the mechanisms of algorithmic manipulation (exploitation of cognitive biases, automated disinformation, etc.) that amplify AI's power of influence. Finally, the question of potential artificial consciousness is discussed, along with its ethical implications. The report as a whole underscores the risks that AI poses to human intellectual autonomy and creativity, while proposing avenues (education, transparency, governance) to align AI development with the interests of humanity.
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