Accurate Causal Inference on Discrete Data

Kailash Budhathoki, Jilles Vreeken
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引用次数: 9

Abstract

Additive Noise Models (ANMs) provide a theoretically sound approach to inferring the most likely causal direction between pairs of random variables given only a sample from their joint distribution. The key assumption is that the effect is a function of the cause, with additive noise that is independent of the cause. In many cases ANMs are identifiable. Their performance, however, hinges on the chosen dependence measure, the assumption we make on the true distribution. In this paper we propose to use Shannon entropy to measure the dependence within an ANM, which gives us a general approach by which we do not have to assume a true distribution, nor have to perform explicit significance tests during optimization. The information-theoretic formulation gives us a general, efficient, identifiable, and, as the experiments show, highly accurate method for causal inference on pairs of discrete variables—achieving (near) 100% accuracy on both synthetic and real data.
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离散数据的精确因果推断
加性噪声模型(ANMs)提供了一种理论上合理的方法来推断随机变量对之间最可能的因果方向,仅从它们的联合分布中给出一个样本。关键的假设是,效果是原因的函数,而附加噪声与原因无关。在许多情况下,arm是可识别的。然而,它们的性能取决于所选择的依赖度量,即我们对真实分布的假设。在本文中,我们建议使用香农熵来衡量ANM内的依赖性,这给了我们一种通用的方法,通过这种方法,我们不必假设一个真实的分布,也不必在优化期间执行显式的显著性检验。信息论公式为我们提供了一种通用的、有效的、可识别的,并且如实验所示,对离散变量对进行因果推理的高度准确的方法-在合成和实际数据上实现(接近)100%的准确性。
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