arXiv Open Access 2025

DAG DECORation: Continuous Optimization for Structure Learning under Hidden Confounding

Samhita Pal James O'quinn Kaveh Aryan Heather Pua James P. Long +1 lainnya
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Abstrak

We study structure learning for linear Gaussian SEMs in the presence of latent confounding. Existing continuous methods excel when errors are independent, while deconfounding-first pipelines rely on pervasive factor structure or nonlinearity. We propose \textsc{DECOR}, a single likelihood-based and fully differentiable estimator that jointly learns a DAG and a correlated noise model. Our theory gives simple sufficient conditions for global parameter identifiability: if the mixed graph is bow free and the noise covariance has a uniform eigenvalue margin, then the map from $(\B,\OmegaMat)$ to the observational covariance is injective, so both the directed structure and the noise are uniquely determined. The estimator alternates a smooth-acyclic graph update with a convex noise update and can include a light bow complementarity penalty or a post hoc reconciliation step. On synthetic benchmarks that vary confounding density, graph density, latent rank, and dimension with $n<p$, \textsc{DECOR} matches or outperforms strong baselines and is especially robust when confounding is non-pervasive, while remaining competitive under pervasiveness.

Topik & Kata Kunci

Penulis (6)

S

Samhita Pal

J

James O'quinn

K

Kaveh Aryan

H

Heather Pua

J

James P. Long

A

Amir Asiaee

Format Sitasi

Pal, S., O'quinn, J., Aryan, K., Pua, H., Long, J.P., Asiaee, A. (2025). DAG DECORation: Continuous Optimization for Structure Learning under Hidden Confounding. https://arxiv.org/abs/2510.02117

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓