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Learning High-dimensional Directed Acyclic Graphs with Mixed Data-types

机译:学习具有混合数据类型的高维有向无环图

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摘要

In recent years, great strides have been made for causal structure learning in the high-dimensional setting and in the mixed data-type setting when there are both discrete and continuous variables. However, due to the complications involved with modeling continuous-discrete variable interactions, the intersection of these two settings has been relatively understudied. The current paper explores the problem of efficiently extending causal structure learning algorithms to high-dimensional data with mixed data-types. First, we characterize a model over continuous and discrete variables. Second, we derive a degenerate Gaussian (DG) score for mixed data-types and discuss its asymptotic properties. Lastly, we demonstrate the practicality of the DG score on learning causal structures from simulated data sets.
机译:近年来,在存在离散变量和连续变量的情况下,在高维设置和混合数据类型设置中的因果结构学习方面已取得了长足的进步。但是,由于建模连续离散变量交互所涉及的复杂性,这两个设置的相交被相对地研究不足。本文探讨了将因果结构学习算法有效地扩展到具有混合数据类型的高维数据的问题。首先,我们描述了连续和离散变量的模型。其次,我们推导了混合数据类型的简并高斯(DG)分数,并讨论了其渐近性质。最后,我们证明了DG分数在从模拟数据集学习因果结构中的实用性。

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