cs.AI updates on arXiv.org 10月07日 12:17
分布鲁棒因果抽象学习新方法
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本文提出了一种新的分布鲁棒因果抽象(CA)学习算法,解决了传统方法对环境变化和模型设定敏感的问题,通过Wasserstein模糊集实现了对鲁棒性的选择,并在不同问题上验证了其鲁棒性。

arXiv:2510.04842v1 Announce Type: cross Abstract: Causal Abstraction (CA) theory provides a principled framework for relating causal models that describe the same system at different levels of granularity while ensuring interventional consistency between them. Recently, several approaches for learning CAs have been proposed, but all assume fixed and well-specified exogenous distributions, making them vulnerable to environmental shifts and misspecification. In this work, we address these limitations by introducing the first class of distributionally robust CAs and their associated learning algorithms. The latter cast robust causal abstraction learning as a constrained min-max optimization problem with Wasserstein ambiguity sets. We provide theoretical results, for both empirical and Gaussian environments, leading to principled selection of the level of robustness via the radius of these sets. Furthermore, we present empirical evidence across different problems and CA learning methods, demonstrating our framework's robustness not only to environmental shifts but also to structural model and intervention mapping misspecification.

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因果抽象 分布鲁棒性 Wasserstein模糊集 模型学习 环境变化
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