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Causal Discovery Based on Healthcare Information

机译:基于医疗信息的因果区发现

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Correctly discovering causal relations from healthcare information can help people to understand disease mechanisms and discover disease causes. In some cases, the healthcare data do not follow a multivariate Gaussian distribution. We design a new causal structure learning algorithm. The algorithm can effectively combines ideas from local learning with simultaneous equations models techniques. In the first phase of the algorithm we select potential neighbors for each variable based on simultaneous equations models, and then perform a constrained hill-climbing search to orient the edges. Using the algorithm without prior knowledge, we analyze causal relations in the real data from the National Health and Nutrition Examination Survey.
机译:正确发现医疗保健信息的因果关系可以帮助人们了解疾病机制并发现疾病的原因。在某些情况下,医疗保健数据不遵循多元高斯分布。我们设计了一种新的因果结构学习算法。该算法可以通过同时等式模型技术有效地将思想与本地学习结合起来。在算法的第一阶段,我们基于同时等式模型选择每个变量的潜在邻居,然后执行约束的爬山搜索以定向边缘。使用本算法未经事先知识,我们分析了来自国家卫生和营养考试调查的实际数据中的因果关系。

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