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Evaluation of Causal Structure Learning Methods on Mixed Data Types

机译:因果结构学习方法在混合数据类型上的评估

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摘要

Causal structure learning algorithms are very important in many fields, including biomedical sciences, because they can uncover the underlying causal network structure from observational data. Several such algorithms have been developed over the years, but they usually operate on datasets of a single data type: continuous or discrete variables only. More recently, we and others have proposed new causal structure learning algorithms for mixed data types. However, to-date there is no study that critically evaluates these methods’ performance. In this paper, we provide the first extensive empirical evaluation of several popular causal structure learning methods on mixed data types and in a variety of parameter settings and sample sizes. Our results serve as a guide as to which method performs the best in a given context, and as such they are a first step towards a “method selection guide” for those running causal modeling methods on real life datasets.
机译:因果结构学习算法在包括生物医学在内的许多领域都非常重要,因为它们可以从观测数据中发现潜在的因果网络结构。这些年来已经开发了几种这样的算法,但是它们通常对单一数据类型的数据集起作用:仅连续或离散变量。最近,我们和其他人提出了针对混合数据类型的新因果结构学习算法。但是,迄今为止,尚无研究对这些方法的性能进行严格评估。在本文中,我们对混合数据类型以及各种参数设置和样本量下几种流行的因果结构学习方法进行了首次广泛的实证评估。我们的结果可作为指导哪种方法在给定背景下效果最佳的指南,因此,它们是朝着在现实数据集上运行因果建模方法的人员迈向“方法选择指南”的第一步。

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