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Main Authors: Vo, Vy, Zhao, He, Le, Trung, Bonilla, Edwin V., Phung, Dinh
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.16249
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author Vo, Vy
Zhao, He
Le, Trung
Bonilla, Edwin V.
Phung, Dinh
author_facet Vo, Vy
Zhao, He
Le, Trung
Bonilla, Edwin V.
Phung, Dinh
contents Learning DAG structures from purely observational data remains a long-standing challenge across scientific domains. An emerging line of research leverages the score of the data distribution to initially identify a topological order of the underlying DAG via leaf node detection and subsequently performs edge pruning for graph recovery. This paper extends the score matching framework for causal discovery, which is originally designated for continuous data, and introduces a novel leaf discriminant criterion based on the discrete score function. Through simulated and real-world experiments, we demonstrate that our theory enables accurate inference of true causal orders from observed discrete data and the identified ordering can significantly boost the accuracy of existing causal discovery baselines on nearly all of the settings.
format Preprint
id arxiv_https___arxiv_org_abs_2601_16249
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Ordering-based Causal Discovery via Generalized Score Matching
Vo, Vy
Zhao, He
Le, Trung
Bonilla, Edwin V.
Phung, Dinh
Machine Learning
Artificial Intelligence
Learning DAG structures from purely observational data remains a long-standing challenge across scientific domains. An emerging line of research leverages the score of the data distribution to initially identify a topological order of the underlying DAG via leaf node detection and subsequently performs edge pruning for graph recovery. This paper extends the score matching framework for causal discovery, which is originally designated for continuous data, and introduces a novel leaf discriminant criterion based on the discrete score function. Through simulated and real-world experiments, we demonstrate that our theory enables accurate inference of true causal orders from observed discrete data and the identified ordering can significantly boost the accuracy of existing causal discovery baselines on nearly all of the settings.
title Ordering-based Causal Discovery via Generalized Score Matching
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2601.16249