JMLR

On the Representation of Pairwise Causal Background Knowledge and Its Applications in Causal Inference

Authors
Zhuangyan Fang Ruiqi Zhao Yue Liu Yangbo He
Research Topics
Causal Inference Machine Learning
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Dec 30, 2025
Abstract

Pairwise causal background knowledge about the existence or absence of causal edges and paths is frequently encountered in observational studies. Such constraints allow the shared directed and undirected edges in the constrained subclass of Markov equivalent DAGs to be represented as a causal maximally partially directed acyclic graph (MPDAG). In this paper, we first provide a sound and complete graphical characterization of causal MPDAGs and introduce a minimal representation of a causal MPDAG. Then, we give a unified representation for three types of pairwise causal background knowledge, including direct, ancestral and non-ancestral causal knowledge, by introducing a novel concept called direct causal clause (DCC). Using DCCs, we study the consistency and equivalence of pairwise causal background knowledge and show that any pairwise causal background knowledge set can be uniquely and equivalently decomposed into the causal MPDAG representing the refined Markov equivalence class and a minimal residual set of DCCs. Polynomial-time algorithms are also provided for checking consistency and equivalence, as well as for finding the decomposed MPDAG and the residual DCCs. Finally, with pairwise causal background knowledge, we prove a sufficient and necessary condition to identify causal effects and surprisingly find that the identifiability of causal effects only depends on the decomposed MPDAG. We also develop a local IDA-type algorithm to estimate the possible values of an unidentifiable effect. Simulations suggest that pairwise causal background knowledge can significantly improve the identifiability of causal effects.

Author Details
Zhuangyan Fang
Author
Ruiqi Zhao
Author
Yue Liu
Author
Yangbo He
Author
Research Topics & Keywords
Causal Inference
Research Area
Machine Learning
Research Area
Citation Information
APA Format
Zhuangyan Fang , Ruiqi Zhao , Yue Liu & Yangbo He . On the Representation of Pairwise Causal Background Knowledge and Its Applications in Causal Inference. Journal of Machine Learning Research .
BibTeX Format
@article{paper701,
  title = { On the Representation of Pairwise Causal Background Knowledge and Its Applications in Causal Inference },
  author = { Zhuangyan Fang and Ruiqi Zhao and Yue Liu and Yangbo He },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v26/23-0624.html }
}