论文标题
通过稀疏基质分解从反协方差矩阵中学习大的因果结构
Learning Large Causal Structures from Inverse Covariance Matrix via Sparse Matrix Decomposition
论文作者
论文摘要
从观察数据中学习因果结构是一个基本问题,当变量数量较大时,要面临重要的计算挑战。在线性结构方程模型(SEM)的背景下,本文着重于从反变量矩阵中学习因果结构。所提出的方法,称为ICID,用于从反协方差矩阵中提供独立性分解,是基于矩阵分解模型的连续优化,该模型保留了逆协方差矩阵的非零模式。通过理论和经验证据,我们表明ICID有效地识别了噪声方差知识的所需的定向无环图(DAG)。此外,在噪声方差不等式的情况下,在噪声方差的有限错误指定下,ICID在经验上表现出可靠的。所提出的方法的复杂性较低,这反映了其在实验中的时间效率,还可以实现一种新颖的正则化方案,该方案在模拟fMRI数据上产生了高度准确的解决方案(Smith等,2011),与最先进的算法相比。
Learning causal structures from observational data is a fundamental problem facing important computational challenges when the number of variables is large. In the context of linear structural equation models (SEMs), this paper focuses on learning causal structures from the inverse covariance matrix. The proposed method, called ICID for Independence-preserving Decomposition from Inverse Covariance matrix, is based on continuous optimization of a matrix decomposition model that preserves the nonzero patterns of the inverse covariance matrix. Through theoretical and empirical evidences, we show that ICID efficiently identifies the sought directed acyclic graph (DAG) assuming the knowledge of noise variances. Moreover, ICID is shown empirically to be robust under bounded misspecification of noise variances in the case where the noise variances are non-equal. The proposed method enjoys a low complexity, as reflected by its time efficiency in the experiments, and also enables a novel regularization scheme that yields highly accurate solutions on the Simulated fMRI data (Smith et al., 2011) in comparison with state-of-the-art algorithms.