CYAIMay 5

Brainrot: Deskilling and Addiction are Overlooked AI Risks

arXiv:2605.0351216.2
Predicted impact top 11% in CY · last 90 daysOriginality Synthesis-oriented
AI Analysis

For AI safety researchers and policymakers, this paper draws attention to overlooked risks that affect general public welfare, though it is primarily a call to action rather than a novel solution.

The paper highlights that AI safety and alignment research has largely ignored cognitive and mental health risks such as deskilling and addiction from generative AI, quantifying this discrepancy and proposing mitigation strategies including information campaigns and regulation.

The scope of AI safety and alignment work in generative artificial intelligence (GenAI) has so far mostly been limited to harms related to: (a) discrimination and hate speech, (b) harmful/inappropriate (violent, sexual, illegal) content, (c) information hazards, and (d) use cases related to malicious actors, such as cybersecurity, child abuse, and chemical, biological, radiological, and nuclear threats. The public conversation around AI, on the other hand, has also been focusing on threats to our cognition, mental health, and welfare at large, related to over-relying on new technologies, most recently, those related to GenAI. Examples include deskilling associated with cognitive offloading and the atrophy of critical thinking as a result of over-reliance on GenAI systems, and addiction associated with attachment and dependence on GenAI systems. Such risks are rarely addressed, if at all, in the AI safety and alignment literature. In this paper, we highlight and quantify this discrepancy and discuss some initial thoughts on how safety and alignment work could address cognitive and mental health concerns. Finally, we discuss how information campaigns and regulation can be used to mitigate such prominent risks.

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