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Justifying Additive Noise Model-Based Causal Discovery via Algorithmic Information Theory

机译:通过算法信息理论证明基于加法噪声模型的因果发现

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摘要

A recent method for causal discovery is in many cases able to infer whether X causes Y or Y causes X for just two observed variables X and Y. It is based on the observation that there exist (non-Gaussian) joint distributions P(X,Y) for which Y may be written as a function of X up to an additive noise term that is independent of X and no such model exists from Y to X. Whenever this is the case, one prefers the causal model X → Y. Here we justify this method by showing that the causal hypothesis Y → X is unlikely because it requires a specific tuning between P(Y) and P(X|Y) to generate a distribution that admits an additive noise model from X to Y. To quantify the amount of tuning, needed we derive lower bounds on the algorithmic information shared by P(Y) and P(X|Y). This way, our justification is consistent with recent approaches for using algorithmic information theory for causal reasoning. We extend this principle to the case where P(X,Y) almost admits an additive noise model. Our results suggest that the above conclusion is more reliable if the complexity of P(Y) is high.
机译:一种最新的因果发现方法可以在许多情况下仅针对两个观察到的变量X和Y推断X是造成Y还是Y导致X。它基于这样的观察,即存在(非高斯)联合分布P(X, Y),其中Y可以作为X的函数写成一个与X无关的加性噪声​​项,并且从Y到X不存在这样的模型。在这种情况下,人们更喜欢因果模型X→Y。我们通过证明因果假设Y→X不太可能证明这种方法的合理性,因为它需要在P(Y)和P(X | Y)之间进行特定调整才能生成一个允许从X到Y的加性噪声​​模型的分布。我们需要推导P(Y)和P(X | Y)共享的算法信息的下界。这样,我们的论证与使用算法信息论进行因果推理的最新方法是一致的。我们将此原理扩展到P(X,Y)几乎接受加性噪声模型的情况。我们的结果表明,如果P(Y)的复杂度较高,则上述结论更为可靠。

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    Janzing, D.; Steudel, B.;

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  • 年度 2010
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