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Causal Inference Using Linear Time-Varying Filters with Additive Noise

机译:使用具有添加剂噪声的线性时变滤波器的因果推断

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Causal inference using the restricted structural causal model framework hinges largely on the asymmetry between cause and effect from the data generating mechanisms. For linear non-Gaussian noise models and nonlinear additive noise models, the asymmetry arises from non-Gaussianity or non-linearity, respectively. Despite the fact that this methodology can be adapted to stationary time series, inferring causal relationships from nonstationary time series remains a challenging task. In this work, we focus on slowly-varying nonstationary processes and propose to break the symmetry by exploiting the nonstationarity of the data. Our main theoretical result shows that the causal direction is identifiable in generic cases when cause and effect are connected via a time-varying filter. We propose a causal discovery procedure by leveraging powerful estimates of the bivariate evolutionary spectra. Both synthetic and real-world data simulations that involve high-order and non-smooth filters are provided to demonstrate the effectiveness of our proposed methodology.
机译:因果推断使用受限制的结构因果模型框架铰链在很大程度上铰接原因与数据产生机制的原因与效果之间的不对称性。对于线性非高斯噪声模型和非线性添加剂噪声模型,不对称性分别由非高斯度或非线性度出现。尽管该方法可以适应静止时间序列,但是从非营养时间序列推断出来自非国家时间序列的因果关系仍然是一个具有挑战性的任务。在这项工作中,我们专注于缓慢变化的非平稳过程,并建议通过利用数据的非间转性来打破对称性。我们的主要理论结果表明,当通过时变滤波器连接原因和效果时,常规情况可识别因果方向。我们通过利用双变量进化光谱的强大估计来提出因果发现程序。提供了涉及高阶和非平滑滤波器的合成和实际数据模拟,以证明我们提出的方法的有效性。

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