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Nov, 2024
在未观察到的混杂因素影响下的可扩展的对分布外鲁棒性
Scalable Out-of-distribution Robustness in the Presence of Unobserved Confounders
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Parjanya Prashant, Seyedeh Baharan Khatami, Bruno Ribeiro, Babak Salimi
TL;DR
本研究解决了在未观察到的混杂因素影响下的对分布外(OOD)泛化问题,传统的假设无法适用。我们提出了一组简化的可识别性假设,从而使预测模型更简单且效果优于现有方法,具有显著的研究价值与应用前景。
Abstract
We consider the task of
Out-of-distribution
(OOD)
Generalization
, where the distribution shift is due to an unobserved confounder ($Z$) affecting both the covariates ($X$) and the labels ($Y$). In this setting, t
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