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  • Examples and Reviews of Methods with a Restricted Class of Mechanisms

Pairwise LiNGAM Inference

The LiNGAM method was first developed for directed acyclic graph orientation for more than two variables. LiNGAM handles linear structural equation models, where each variable is continuous and modeled as: Xi:=kαkPak(Xi)+Ei,i[[1,n]]X_i := \sum_{k} \alpha_k P_a^k (X_i) + E_i, i \in [[1,n]] with the k th parent of XiX_i and αkα_k a real value. Assuming further that all probability distributions of source nodes in the causal graph are non-Gaussian, it is shown that the causal structure is fully identifiable (all edges can be oriented)

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5 years ago

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Data Science

Related
  • Pairwise LiNGAM Inference

  • Additive Noise Model (ANM)

  • Post Nonlinear Model (PNL)

Learn After
  • LiNGAM Model

  • LiNGAM Identifiability Result

  • LiNGAM Practical Evaluation