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Causal Effect Identifiability under Partial-Observability

机译:部分可观察性下的因果效应可识别性

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Causal effect identifiability is concerned with establishing the effect of intervening on a set of variables on another set of variables from observational or interventional distributions under causal assumptions that are usually encoded in the form of a causal graph. Most of the results of this literature implicitly assume that every variable modeled in the graph is measured in the available distributions. In practice, however, the data collections of the different studies considered do not measure the same variables, consistently. In this paper, we study the causal effect identifiability problem when the available distributions encompass different sets of variables, which we refer to as identification under partial-observability. We study a number of properties of the factors that comprise a causal effect under various levels of abstraction, and then characterize the relationship between them with respect to their status relative to the identification of a targeted intervention. We establish a sufficient graphical criterion for determining whether the effects are identifiable from partially-observed distributions. Finally, building on these graphical properties, we develop an algorithm that returns a formula for a causal effect in terms of the available distributions.
机译:因果效应可识别性涉及建立在来自通常以因果图的形式编码的因果假设下的观测或介入分布的另一组变量上的变量对一组变量的影响。该文献的大多数结果隐含地假设在图表中建模的每个变量在可用的分布中测量。然而,在实践中,所考虑的不同研究的数据收集不始终如一地测量相同的变量。在本文中,我们研究可用分布包围不同变量集的因果效果可识别性问题,我们将其称为在部分可观察性下的识别。我们研究了许多属性的属性,包括在各种抽象层面下的因果效应,然后在相对于识别目标干预的情况下表征它们之间的关系。我们建立了足够的图形标准,用于确定是否从部分观察到的分布识别效果。最后,在这些图形属性上构建,我们开发了一种算法,该算法在可用分布方面返回一个因果效果的公式。

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