因果发现的广义得分函数。

Biwei Huang, Kun Zhang, Yizhu Lin, Bernhard Schölkopf, Clark Glymour
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引用次数: 99

摘要

从观测数据中发现因果关系是一个根本问题。大致来说,因果发现有两种方法,基于约束的方法和基于分数的方法。基于分数的方法避免了多重测试问题,与基于约束的方法相比具有一定的优势。然而,它们中的大多数需要对因果机制的功能形式以及数据分布进行强有力的假设,这限制了它们的适用性。在实践中,底层模型类的精确信息通常是未知的。如果违反上述假设,则可能会导致伪边和缺边。在本文中,我们在不假设特定模型类的情况下,基于随机变量之间一般(条件)独立关系的特征,引入了因果发现的广义得分函数。特别是,我们利用RKHS中的回归以非参数方式捕捉相关性。由此产生的因果发现方法在相当普遍的情况下产生渐近正确的结果,这些情况可能具有非线性因果机制、广泛的数据分布、混合的连续和离散数据以及多维变量。在合成数据和真实世界数据上的实验结果证明了我们提出的方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Generalized Score Functions for Causal Discovery.

Discovery of causal relationships from observational data is a fundamental problem. Roughly speaking, there are two types of methods for causal discovery, constraint-based ones and score-based ones. Score-based methods avoid the multiple testing problem and enjoy certain advantages compared to constraint-based ones. However, most of them need strong assumptions on the functional forms of causal mechanisms, as well as on data distributions, which limit their applicability. In practice the precise information of the underlying model class is usually unknown. If the above assumptions are violated, both spurious and missing edges may result. In this paper, we introduce generalized score functions for causal discovery based on the characterization of general (conditional) independence relationships between random variables, without assuming particular model classes. In particular, we exploit regression in RKHS to capture the dependence in a non-parametric way. The resulting causal discovery approach produces asymptotically correct results in rather general cases, which may have nonlinear causal mechanisms, a wide class of data distributions, mixed continuous and discrete data, and multidimensional variables. Experimental results on both synthetic and real-world data demonstrate the efficacy of our proposed approach.

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