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Individualized causal discovery with latent trajectory embedded Bayesian networks

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  • Fangting Zhou
  • Kejun He
  • Yang Ni

Abstract

Bayesian networks have been widely used to generate causal hypotheses from multivariate data. Despite their popularity, the vast majority of existing causal discovery approaches make the strong assumption of a (partially) homogeneous sampling scheme. However, such assumption can be seriously violated, causing significant biases when the underlying population is inherently heterogeneous. To this end, we propose a novel causal Bayesian network model, termed BN‐LTE, that embeds heterogeneous samples onto a low‐dimensional manifold and builds Bayesian networks conditional on the embedding. This new framework allows for more precise network inference by improving the estimation resolution from the population level to the observation level. Moreover, while causal Bayesian networks are in general not identifiable with purely observational, cross‐sectional data due to Markov equivalence, with the blessing of causal effect heterogeneity, we prove that the proposed BN‐LTE is uniquely identifiable under relatively mild assumptions. Through extensive experiments, we demonstrate the superior performance of BN‐LTE in causal structure learning as well as inferring observation‐specific gene regulatory networks from observational data.

Suggested Citation

  • Fangting Zhou & Kejun He & Yang Ni, 2023. "Individualized causal discovery with latent trajectory embedded Bayesian networks," Biometrics, The International Biometric Society, vol. 79(4), pages 3191-3202, December.
  • Handle: RePEc:bla:biomet:v:79:y:2023:i:4:p:3191-3202
    DOI: 10.1111/biom.13843
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    References listed on IDEAS

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    1. Yang Ni & Francesco C. Stingo & Min Jin Ha & Rehan Akbani & Veerabhadran Baladandayuthapani, 2019. "Bayesian Hierarchical Varying-Sparsity Regression Models with Application to Cancer Proteogenomics," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 114(525), pages 48-60, January.
    2. Benjamin A Logsdon & Jason Mezey, 2010. "Gene Expression Network Reconstruction by Convex Feature Selection when Incorporating Genetic Perturbations," PLOS Computational Biology, Public Library of Science, vol. 6(12), pages 1-13, December.
    3. Yang Ni & Francesco C. Stingo & Veerabhadran Baladandayuthapani, 2019. "Bayesian Graphical Regression," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 114(525), pages 184-197, January.
    4. Dominik Rothenhäusler & Nicolai Meinshausen & Peter Bühlmann & Jonas Peters, 2021. "Anchor regression: Heterogeneous data meet causality," Journal of the Royal Statistical Society Series B, Royal Statistical Society, vol. 83(2), pages 215-246, April.
    5. J. Peters & P. Bühlmann, 2014. "Identifiability of Gaussian structural equation models with equal error variances," Biometrika, Biometrika Trust, vol. 101(1), pages 219-228.
    6. Niklas Pfister & Peter Bühlmann & Jonas Peters, 2019. "Invariant Causal Prediction for Sequential Data," Journal of the American Statistical Association, Taylor & Francis Journals, vol. 114(527), pages 1264-1276, July.
    7. Federico Castelletti & Guido Consonni, 2021. "Bayesian inference of causal effects from observational data in Gaussian graphical models," Biometrics, The International Biometric Society, vol. 77(1), pages 136-149, March.
    8. Lingxue Zhang & Seyoung Kim, 2014. "Learning Gene Networks under SNP Perturbations Using eQTL Datasets," PLOS Computational Biology, Public Library of Science, vol. 10(2), pages 1-20, February.
    9. Jonas Peters & Peter Bühlmann & Nicolai Meinshausen, 2016. "Causal inference by using invariant prediction: identification and confidence intervals," Journal of the Royal Statistical Society Series B, Royal Statistical Society, vol. 78(5), pages 947-1012, November.
    10. Yang Ni & Francesco C. Stingo & Veerabhadran Baladandayuthapani, 2015. "Bayesian nonlinear model selection for gene regulatory networks," Biometrics, The International Biometric Society, vol. 71(3), pages 585-595, September.
    11. Davide Altomare & Guido Consonni & Luca La Rocca, 2013. "Objective Bayesian Search of Gaussian Directed Acyclic Graphical Models for Ordered Variables with Non-Local Priors," Biometrics, The International Biometric Society, vol. 69(2), pages 478-487, June.
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