Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

PACER: Acyclic Causal Discovery from Large-Scale Interventional Data

About

Inferring the structure of directed acyclic graphs (DAGs) from data is a central challenge in causal discovery, particularly in modern high-dimensional settings where large-scale interventional data are increasingly available. While interventional data can improve identifiability, existing methods remain limited by soft acyclicity constraints, leading to optimization over invalid cyclic graphs, numerical instability, and reduced scalability. We introduce PACER (Perturbation-driven Acyclic Causal Edge Recovery), a scalable framework for causal discovery that guarantees acyclicity by construction. PACER parameterizes a distribution over DAGs through a joint model of variable permutations and edge probabilities, enabling direct optimization over valid causal structures without surrogate penalties. The framework supports a unified likelihood-based treatment of observational and interventional data, flexible conditional density models, and the incorporation of structural prior knowledge. For linear-Gaussian mechanisms, we derive closed-form expressions for the expected interventional log-likelihood and its gradients, yielding substantial computational gains. Empirically, PACER matches or exceeds state-of-the-art methods on protein signaling and large-scale genetic perturbation benchmarks, while scaling efficiently to networks with thousands of variables and achieving up to two orders of magnitude speedups over penalty-based differentiable approaches. These results demonstrate that exact and scalable causal discovery from high-dimensional perturbation data is achievable through principled search space design.

Ramon Vi\~nas Torn\'e, S\'ilvia F\`abregas Salazar, Soyon Park, Ivo Alexander Ban, Artyom Gadetsky, Nikita Doikov, Maria Brbi\'c• 2026

Related benchmarks

TaskDatasetResultRank
Causal DiscoverySynthetic Data
Runtime507.5
57
Causal DiscoverySACHS p = 11, s = 20, n = 100 (real flow cytometry)
F1 Score49
13
Causal DiscoveryRPE1 Perturb-seq CausalBench
W Score21.3
13
Causal DiscoveryK562 Perturb-seq CausalBench
W Score18.3
13
Causal DiscoverySachs flow cytometry observational
SHD21
9
Acyclic Causal DiscoveryPerturb-CITE-seq (Control)
Average Runtime (min)6.4
4
Acyclic Causal DiscoveryPerturb-CITE-seq Cocult
Average Runtime (min)7.5
4
Acyclic Causal DiscoveryPerturb-CITE-seq IFN
Average Runtime (minutes)11
4
Showing 8 of 8 rows

Other info

Follow for update