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Extracting Causal Nets from Databases

机译:从数据库中提取因果网

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摘要

Causal nets (Pearl 1986) are an elegant way of representing the structure and relationships of a set of data. The propagation of changes through the net has been examined and reported on in many works (Pearl 1986, Lauritzen & Speigelhalter 1988, Neapolitan 1990). Causal nets are defined by the properties of conditional independence, and so the structure of the net may be obtained by discovering conditional independences. Many of the examples in the literature test for complete equality. However, the presence of noise and the unreliability of comparing two real numbers means that equality is taken to mean equality within a particular tolerance. Where a set of data contains a number of representative subsets this tolerance can be almost zero. If there is an incomplete subset in the data and conjoint events then the tolerance cannot be zero. The paper presents a method for estimating the size of the partial cohort, the size of the representative cohorts and thus provides a robust test for conditional independence.
机译:因果网(Pearl 1986)是代表一组数据的结构和关系的优雅方式。在许多作品中审查并报告了通过网的变化传播(Pearl 1986,Lauritzen&Speigelhalter 1988,Neapolitan 1990)。因果网通过条件独立性的性质来定义,因此可以通过发现条件独立性来获得网络的结构。在文献测试中的许多例子进行了完全平等。然而,噪声的存在和比较两个实数的不可靠性意味着平等被认为是在特定公差内的平等。其中一组数据包含许多代表子集,这种公差几乎为零。如果数据和联合事件中存在不完整的子集,则公差不能为零。本文提出了一种估计部分群组的大小,代表队列的大小的方法,因此为条件独立提供了鲁棒测试。

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