Tslingam: Directlingam Under Heavy Tails

Sarah Leyder, Jakob Raymaekers, Tim Verdonck*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

One of the established approaches to causal discovery consists of combining directed acyclic graphs (DAGs) with structural causal models (SCMs) to describe the functional dependencies of effects on their causes. Possible identifiability of SCMs given data depends on assumptions made on the noise variables and the functional classes in the SCM. For instance, in the LiNGAM model, the functional class is restricted to linear functions and the disturbances have to be non-Gaussian. In this work, we propose TSLiNGAM, a new method for identifying the DAG of a causal model based on observational data. TSLiNGAM builds on DirectLiNGAM, a popular algorithm which uses simple OLS regression for identifying causal directions between variables. TSLiNGAM leverages the non-Gaussianity assumption of the error terms in the LiNGAM model to obtain more efficient and robust estimation of the causal structure. TSLiNGAM is justified theoretically and is studied empirically in an extensive simulation study. It performs significantly better on heavy-tailed and skewed data and demonstrates a high small-sample efficiency. In addition, TSLiNGAM also shows better robustness properties as it is more resilient to contamination. Supplementary materials for this article are available online.
Original languageEnglish
Number of pages11
JournalJournal of Computational and Graphical Statistics
DOIs
Publication statusE-pub ahead of print - 1 Sept 2024

Keywords

  • Causal discovery
  • Efficiency
  • LiNGAM
  • Structural causal models
  • GAUSSIAN ACYCLIC MODEL
  • CAUSAL DISCOVERY
  • REGRESSION
  • ROBUST
  • SIMULATION
  • ESTIMATOR
  • ALGORITHM

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  • TSLiNGAM: DirectLiNGAM under heavy tails

    Leyder, S., Raymaekers, J. & Verdonck, T., 10 Aug 2023, Cornell University - arXiv, 35 p. (arXiv.org; No. 2308.05422).

    Research output: Working paper / PreprintPreprint

    Open Access
    25 Downloads (Pure)

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