Bridging Distribution Shift and AI Safety: Conceptual and Methodological Synergies
Liu, Chenruo, Tang, Kenan, Qin, Yao, Lei, Qi
–arXiv.org Artificial Intelligence
This paper bridges distribution shift and AI safety through a comprehensive analysis of their conceptual and methodological synergies. While prior discussions often focus on narrow cases or informal analogies, we establish two types connections between specific causes of distribution shift and fine-grained AI safety issues: (1) methods addressing a specific shift type can help achieve corresponding safety goals, or (2) certain shifts and safety issues can be formally reduced to each other, enabling mutual adaptation of their methods. Our findings provide a unified perspective that encourages fundamental integration between distribution shift and AI safety research.
arXiv.org Artificial Intelligence
May-30-2025
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