Joint structure learning and causal effect estimation for categorical graphical models
Journal article, 2024

The scope of this paper is a multivariate setting involving categorical variables. Following an external manipulation of one variable, the goal is to evaluate the causal effect on an outcome of interest. A typical scenario involves a system of variables representing lifestyle, physical and mental features, symptoms, and risk factors, with the outcome being the presence or absence of a disease. These variables are interconnected in complex ways, allowing the effect of an intervention to propagate through multiple paths. A distinctive feature of our approach is the estimation of causal effects while accounting for uncertainty in both the dependence structure, which we represent through a directed acyclic graph (DAG), and the DAG-model parameters. Specifically, we propose a Markov chain Monte Carlo algorithm that targets the joint posterior over DAGs and parameters, based on an efficient reversible-jump proposal scheme. We validate our method through extensive simulation studies and demonstrate that it outperforms current state-of-the-art procedures in terms of estimation accuracy. Finally, we apply our methodology to analyze a dataset on depression and anxiety in undergraduate students.

categorical data

directed acyclic graph

causal inference

Bayesian inference

reversible jump Markov chain Monte Carlo

Author

Federico Castelletti

Università Cattolica del Sacro Cuore

Guido Consonni

Università Cattolica del Sacro Cuore

Marco L. Della Vedova

Chalmers, Mechanics and Maritime Sciences (M2), Vehicle Engineering and Autonomous Systems

Biometrics

0006-341X (ISSN) 1541-0420 (eISSN)

Vol. 80 3 ujae067

Subject Categories

Probability Theory and Statistics

Computer Science

DOI

10.1093/biomtc/ujae067

PubMed

39073773

More information

Latest update

8/6/2024 1