通过约束优化从子采样时间序列数据中发现因果关系

Antti Hyttinen, Sergey Plis, Matti Järvisalo, Frederick Eberhardt, David Danks
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摘要

本文重点研究从时间序列数据中估算因果结构,在这些数据中,测量值的时间尺度比基本系统的因果时间尺度更粗。以往的研究表明,如果不适当考虑这种子采样,会导致系统因果结构出现重大误差。在本文中,我们首先考虑寻找与给定测量时标结构相对应的系统时标因果结构。我们提供了一种约束满足程序,其计算性能比以前的方法高出几个数量级。然后,我们将有限样本数据作为输入,提出了第一种恢复系统时标因果结构的约束优化方法。该算法能从统计误差导致的可能冲突中优化恢复。更广泛地说,这些进展允许从子采样时间序列数据中对系统时标因果结构进行稳健的非参数估计。
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Causal Discovery from Subsampled Time Series Data by Constraint Optimization.

This paper focuses on causal structure estimation from time series data in which measurements are obtained at a coarser timescale than the causal timescale of the underlying system. Previous work has shown that such subsampling can lead to significant errors about the system's causal structure if not properly taken into account. In this paper, we first consider the search for the system timescale causal structures that correspond to a given measurement timescale structure. We provide a constraint satisfaction procedure whose computational performance is several orders of magnitude better than previous approaches. We then consider finite-sample data as input, and propose the first constraint optimization approach for recovering the system timescale causal structure. This algorithm optimally recovers from possible conflicts due to statistical errors. More generally, these advances allow for a robust and non-parametric estimation of system timescale causal structures from subsampled time series data.

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