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Causal Effect Identification from Multiple Incomplete Data Sources: A General Search-Based Approach

机译:多个不完整数据源的因果效应识别:基于一般搜索的方法

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Causal effect identification considers whether an interventional probability distribution can be uniquely determined without parametric assumptions from measured source dis_x0002_tributions and structural knowledge on the generating system. While complete graphical criteria and procedures exist for many identification problems, there are still challenging but important extensions that have not been considered in the literature such as combined transportability and selection bias, or multiple sources of selection bias. To tackle these new settings, we present a search algorithm directly over the rules of do-calculus. Due to the generality of do-calculus, the search is capable of taking more advanced datagenerating mechanisms into account along with an arbitrary type of both observational and experimental source distributions. The search is enhanced via a heuristic and search space reduction techniques. The approach, called do-search, is provably sound, and it is complete with respect to identifiability problems that have been shown to be completely characterized by do-calculus. When extended with additional rules, the search is capable of handling missing data problems as well. With the versatile search, we are able to approach new problems for which no other algorithmic solutions exist. We perform a systematic analysis of bivariate missing data problems and study causal inference under case-control design. We also present the R package dosearch that provides an interface for a C++ implementation of the search.
机译:因果效应识别考虑是否可以在没有从测量的源DIS_0002_TIBIRATUS和生成系统上的结构知识的参数假设的情况下唯一确定介入概率分布。虽然存在满足许多识别问题的完整图形标准和程序,但仍有挑战性,但在文献中尚未考虑的重要扩展,例如组合的可运输性和选择偏差,或多个选择偏差来源。为了解决这些新设置,我们将直接通过DO-COMPULUS规则提供搜索算法。由于DO-COMPULUS的一般性,搜索能够考虑更高级的DATAGENERATED机制以及观察和实验源分布的任意类型。通过启发式和搜索空间减少技术来增强搜索。叫做Do-Search的方法被证明是声音,并且它基于已被证明完全表征的可识别性问题完全进行了。随着附加规则扩展时,搜索也能够处理缺失的数据问题。通过多功能搜索,我们能够接近不存在其他算法解决方案的新问题。我们对案例控制设计进行了对双变量缺失数据问题的系统分析,研究了因果推理。我们还提供了R包DOSEARCH,为搜索的C ++实现提供了一个接口。

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