4.6 Article

Causal Discovery with Confounding Cascade Nonlinear Additive Noise Models

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3482879

Keywords

Causal discovery; additive noise model; latent model

Funding

  1. NSFC-Guangdong Joint Found [U1501254]
  2. Natural Science Foundation of China [61876043]
  3. Natural Science Foundation of Guangdong [2014A030306004, 2014A030308008]
  4. Guangdong High-level Personnel of Special Support Program [2015TQ01X140]
  5. Pearl River S&T Nova Program of Guangzhou [201610010101]
  6. Guangdong Provincial Science and Technology Innovation Strategy Fund [019B121203012]
  7. National Institutes of Health (NIH) [NIH-1R01EB022858-01, FAINRO1EB022858, NIH-1ROILM012087, NIH-51.154HGO0S540-02, FAIN-1.154HG00S540]
  8. United States Air Force [FA8650-17-C-7715]
  9. National Science Foundation (NSF) EAGER Grant [ILS-1829681]

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The article discusses the identification of causal direction between a causal-effect pair from observed data, proposing a confounding cascade nonlinear additive noise model to address the issue of omitted latent causal variables. Simulation results demonstrate the method's ability to identify indirect causal relations across various settings, while experimental results suggest that the proposed model and method greatly extend the applicability of causal discovery based on functional causal models in nonlinear cases.
Identification of causal direction between a causal-effect pair from observed data has recently attracted much attention. Various methods based on functional causal models have been proposed to solve this problem, by assuming the causal process satisfies some (structural) constraints and showing that the reverse direction violates such constraints. The nonlinear additive noise model has been demonstrated to be effective for this purpose, but the model class does not allow any confounding or intermediate variables between a cause pair even if cads direct causal relation follows this model. However, omitting the latent causal variables is frequently encountered in practice. After the omission, the model does not necessarily follow the model constraints. As a consequence, the nonlinear additive noise model may fail to correctly discover causal direction. In this work, we propose a confounding cascade nonlinear additive noise model to represent such causal influences each direct causal relation follows the nonlinear additive noise model but we observe only the initial cause and final effect. We further propose a method to estimate the model, including the unmeasured confounding and intermediate variables, from data under the variational auto-encoder framework. Our theoretical results show that with our model, the causal direction is identifiable under suitable technical conditions on the data generation process. Simulation results illustrate the power of the proposed method in identifying indirect causal relations across various settings, and experimental results on real data suggest that the proposed model and method greatly extend the applicability of causal discovery based on functional causal models in nonlinear cases.

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