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A Bayesian Method for Causal Modeling and Discovery Under Selection

机译:选择下的因果建模和发现的贝叶斯方法

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摘要

This paper describes a Bayesian method for learning causal networks using samples that were selected in a non-random manner from a population of interest. Examples of data obtained by non-random sampling include convenience samples and case-control data in which a fixed number of samples with and without some condition is collected; such data are not uncommon. The paper describes a method for combining data under selection with prior beliefs in order to derive a posterior probability for a model of the causal processes that are generating the data in the population of interest. The priors include beliefs about the nature of the non-random sampling procedure. Although exact application of the method would be computationally intractable for most realistic datasets, efficient special-case and approximation methods are discussed. Finally, the paper describes how to combine learning under selection with previous methods for learning from observational and experimental data that are obtained on random samples of the population of interest. The net result is a Bayesian methodology that supports causal modeling and discovery from a rich mixture of different types of data.
机译:本文介绍了一种贝叶斯方法,该方法使用从感兴趣的人群中以非随机方式选择的样本来学习因果网络。通过非随机采样获得的数据的示例包括便利样本和案例控制数据,其中收集了固定数量的有条件和无条件的样本;这样的数据并不罕见。本文描述了一种将选择中的数据与先验信念进行组合的方法,以便为在目标群体中生成数据的因果过程模型得出后验概率。先验包括对非随机抽样程序性质的信念。尽管对于大多数现实数据集,该方法的确切应用在计算上都是棘手的,但仍在讨论有效的特殊情况和近似方法。最后,本文描述了如何将选择学习与以前的方法结合起来,以便从对目标人群的随机样本中获得的观测和实验数据中进行学习。最终结果是一种贝叶斯方法,该方法支持因果建模和从不同类型数据的丰富混合中发现。

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