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Calculation of Entailed Rank Constraints in Partially Non-Linear and Cyclic Models

机译:部分非线性和循环模型中所需秩约束的计算

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The Trek Separation Theorem (Sullivant et al. 2010) states necessary and sufficient conditions for a linear directed acyclic graphical model to entail for all possible values of its linear coefficients that the rank of various sub-matrices of the covariance matrix is less than or equal to n, for any given n. In this paper, I extend the Trek Separation Theorem in two ways: I prove that the same necessary and sufficient conditions apply even when the generating model is partially non-linear and contains some cycles. This justifies application of constraint-based causal search algorithms to data generated by a wider class of causal models that may contain non-linear and cyclic relations among the latent variables.
机译:迷航分离定理(Sullivant等,2010)指出了线性有向无环图形模型的必要条件和充分条件,要求其线性系数的所有可能值表示协方差矩阵的各个子矩阵的秩小于或等于到n,对于任何给定的n。在本文中,我以两种方式扩展了“迷航分离定理”:证明即使生成模型是部分非线性的并且包含一些周期,相同的必要条件和充分条件也适用。这证明了将基于约束的因果搜索算法应用于由更广泛的因果模型类生成的数据的可能,这些因果模型可能包含潜在变量之间的非线性和循环关系。

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