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[NeurIPS'22] Independence Testing-Based Approach to Causal Discovery under Measurement Error and Linear Non-Gaussian Models

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Transformed Independent Noise (TIN) condition

For latent causal discovery with LiNGAM.

  • Paper: Dai, Haoyue, Peter Spirtes, and Kun Zhang. "Independence Testing-Based Approach to Causal Discovery under Measurement Error and Linear Non-Gaussian Models." NeurIPS 2022.

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[NeurIPS'22] Independence Testing-Based Approach to Causal Discovery under Measurement Error and Linear Non-Gaussian Models

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