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Causal inferences from many experiments

机译:许多实验的因果推论

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The underlying statistical concept that animates empirical strategies for extracting causal inferences from observational data is that observational data may be adjusted to resemble data that might have originated from a randomized experiment. This idea has driven the literature on matching methods. We explore an un-mined idea for making causal inferences with observational data - that any given observational study may contain a large number of indistinguishably balanced matched designs. We demonstrate how the absence of a unique best solution presents an opportunity for greater information retrieval in causal inference analysis based on the principle that many solutions teach us more about a given scientific hypothesis than a single study and improves our discernment with observational studies. The implementation can be achieved by integrating the statistical theories and models within a computational optimization framework that embodies the statistical foundations and reasoning.
机译:对从观察数据中提取因果推断的经验策略进行动画处理的基本统计概念是,可以将观察数据调整为类似于可能源自随机实验的数据。这个想法驱动了有关匹配方法的文献。我们探索了一种利用观测数据进行因果推理的想法,即任何给定的观测研究都可能包含大量难以区分的平衡匹配设计。我们基于一个原理,即许多解决方案比单项研究更多地教给我们关于给定的科学假设的原理,并通过观察性研究提高我们的辨别力,我们证明缺乏独特的最佳解决方案如何为因果推断分析中的更大信息检索提供机会。可以通过将统计理论和模型集成在体现统计基础和推理的计算优化框架中来实现。

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