Causality on Cross-Sectional Data: Stable Specification Search in Constrained Structural Equation Modeling
Ridho Rahmadi, Perry Groot, Marianne Heins, Hans Knoop, Tom Heskes, (The OPTIMISTIC consortium)

TL;DR
This paper introduces a stable, hypothesis-free score-based causal discovery algorithm for structural equation models that improves robustness in finite samples and aligns well with prior knowledge and medical findings.
Contribution
The paper presents a novel stable specification search method that enhances causal structure discovery stability and incorporates prior knowledge within SEM frameworks.
Findings
Significant improvement over existing methods on simulated data
Consistent results with medical expert models on real-world data
Robustness to finite sample variations
Abstract
Causal modeling has long been an attractive topic for many researchers and in recent decades there has seen a surge in theoretical development and discovery algorithms. Generally discovery algorithms can be divided into two approaches: constraint-based and score-based. The constraint-based approach is able to detect common causes of the observed variables but the use of independence tests makes it less reliable. The score-based approach produces a result that is easier to interpret as it also measures the reliability of the inferred causal relationships, but it is unable to detect common confounders of the observed variables. A drawback of both score-based and constrained-based approaches is the inherent instability in structure estimation. With finite samples small changes in the data can lead to completely different optimal structures. The present work introduces a new hypothesis-free…
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