[2604.02250] Smoothing the Landscape: Causal Structure Learning via Diffusion Denoising Objectives

[2604.02250] Smoothing the Landscape: Causal Structure Learning via Diffusion Denoising Objectives

arXiv - Machine Learning 3 min read

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Abstract page for arXiv paper 2604.02250: Smoothing the Landscape: Causal Structure Learning via Diffusion Denoising Objectives

Computer Science > Machine Learning arXiv:2604.02250 (cs) [Submitted on 2 Apr 2026] Title:Smoothing the Landscape: Causal Structure Learning via Diffusion Denoising Objectives Authors:Hao Zhu, Di Zhou, Donna Slonim View a PDF of the paper titled Smoothing the Landscape: Causal Structure Learning via Diffusion Denoising Objectives, by Hao Zhu and 2 other authors View PDF HTML (experimental) Abstract:Understanding causal dependencies in observational data is critical for informing decision-making. These relationships are often modeled as Bayesian Networks (BNs) and Directed Acyclic Graphs (DAGs). Existing methods, such as NOTEARS and DAG-GNN, often face issues with scalability and stability in high-dimensional data, especially when there is a feature-sample imbalance. Here, we show that the denoising score matching objective of diffusion models could smooth the gradients for faster, more stable convergence. We also propose an adaptive k-hop acyclicity constraint that improves runtime over existing solutions that require matrix inversion. We name this framework Denoising Diffusion Causal Discovery (DDCD). Unlike generative diffusion models, DDCD utilizes the reverse denoising process to infer a parameterized causal structure rather than to generate data. We demonstrate the competitive performance of DDCDs on synthetic benchmarking data. We also show that our methods are practically useful by conducting qualitative analyses on two real-world examples. Code is available at this...

Originally published on April 03, 2026. Curated by AI News.

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