We introduce tree linear cascades, a class of linear structural equation models for which the error variables are uncorrelated but need not be Gaussian nor independent. We show that, in spite of this weak assumption, the tree structure of this class of models is identifiable. In a similar vein, we introduce a constrained regression problem for fitting a tree-structured linear structural equation model and solve the problem analytically. We connect these results to the classical Chow-Liu approach for Gaussian graphical models. We conclude by giving an empirical-risk form of the regression and illustrating the computationally attractive implications of our theoretical results on a basic example involving stock prices.
翻译:我们引入了树线级级联,这是一组线性结构方程模型,其误差变量不相干,但不必是高斯或独立。我们表明,尽管这一假设薄弱,但这一类模型的树结构是可以辨认的。同样,我们引入了受限制的回归问题,用于安装树结构线性结构方程模型并分析解决问题。我们将这些结果与古典高斯图形模型的周-利乌方法联系起来。我们最后给出了一种经验风险回归形式,并说明了我们理论结果对涉及股票价格的基本例子的具有计算吸引力的影响。