论文标题
犀牛:与历史依赖噪声的深层因果关系学习
Rhino: Deep Causal Temporal Relationship Learning With History-dependent Noise
论文作者
论文摘要
在时间序列数据中发现不同变量之间的因果关系一直是许多领域的长期挑战,例如气候科学,金融和医疗保健。考虑到现实世界关系的复杂性和离散时间中观察的性质,因果发现方法需要考虑变量,瞬时效应和历史依赖性噪声(由于过去动作引起的噪声分布的变化)之间的非线性关系。但是,以前的作品没有提供解决所有这些问题的解决方案。在本文中,我们提出了一个新颖的因果关系学习框架,用于时间序列数据,称为Rhino,该框架结合了向量自动回归,深度学习和变异推理,以模拟非线性关系与瞬时效应,同时允许通过历史观察来调节噪声分布。从理论上讲,我们证明了犀牛的结构可识别性。我们来自广泛的合成实验和两个现实基准的经验结果表明,与相关基准相比,发现性能更好,消融研究揭示了其在模型错误指定下的鲁棒性。
Discovering causal relationships between different variables from time series data has been a long-standing challenge for many domains such as climate science, finance, and healthcare. Given the complexity of real-world relationships and the nature of observations in discrete time, causal discovery methods need to consider non-linear relations between variables, instantaneous effects and history-dependent noise (the change of noise distribution due to past actions). However, previous works do not offer a solution addressing all these problems together. In this paper, we propose a novel causal relationship learning framework for time-series data, called Rhino, which combines vector auto-regression, deep learning and variational inference to model non-linear relationships with instantaneous effects while allowing the noise distribution to be modulated by historical observations. Theoretically, we prove the structural identifiability of Rhino. Our empirical results from extensive synthetic experiments and two real-world benchmarks demonstrate better discovery performance compared to relevant baselines, with ablation studies revealing its robustness under model misspecification.