cs.AI updates on arXiv.org 10月10日
因果图识别平均直接效应研究
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本文研究在总结因果图中识别平均控制直接效应和平均自然直接效应的问题,并给出在存在隐藏混杂因素时识别平均控制微观直接效应和平均自然微观直接效应的充分条件。

arXiv:2410.23975v2 Announce Type: replace Abstract: In this paper, we investigate the identifiability of average controlled direct effects and average natural direct effects in causal systems represented by summary causal graphs, which are abstractions of full causal graphs, often used in dynamic systems where cycles and omitted temporal information complicate causal inference. Unlike in the traditional linear setting, where direct effects are typically easier to identify and estimate, non-parametric direct effects, which are crucial for handling real-world complexities, particularly in epidemiological contexts where relationships between variables (e.g, genetic, environmental, and behavioral factors) are often non-linear, are much harder to define and identify. In particular, we give sufficient conditions for identifying average controlled micro direct effect and average natural micro direct effect from summary causal graphs in the presence of hidden confounding. Furthermore, we show that the conditions given for the average controlled micro direct effect become also necessary in the setting where there is no hidden confounding and where we are only interested in identifiability by adjustment.

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因果图 直接效应 识别 混杂因素 微观效应
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