StereoTales shows that all tested LLMs emit harmful stereotypes in open-ended stories, with associations adapting to prompt language and targeting locally salient groups rather than transferring uniformly across languages.
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A non-parametric causal framework decomposes disparities in survival times into direct, indirect, and spurious pathway contributions using graphical models and the Causal Reduction Theorem.
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StereoTales: A Multilingual Framework for Open-Ended Stereotype Discovery in LLMs
StereoTales shows that all tested LLMs emit harmful stereotypes in open-ended stories, with associations adapting to prompt language and targeting locally salient groups rather than transferring uniformly across languages.
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Causal Fairness for Survival Analysis
A non-parametric causal framework decomposes disparities in survival times into direct, indirect, and spurious pathway contributions using graphical models and the Causal Reduction Theorem.