English

Causal Graph ODE: Continuous Treatment Effect Modeling in Multi-agent Dynamical Systems

Machine Learning 2024-03-04 v1 Artificial Intelligence

Abstract

Real-world multi-agent systems are often dynamic and continuous, where the agents co-evolve and undergo changes in their trajectories and interactions over time. For example, the COVID-19 transmission in the U.S. can be viewed as a multi-agent system, where states act as agents and daily population movements between them are interactions. Estimating the counterfactual outcomes in such systems enables accurate future predictions and effective decision-making, such as formulating COVID-19 policies. However, existing methods fail to model the continuous dynamic effects of treatments on the outcome, especially when multiple treatments (e.g., "stay-at-home" and "get-vaccine" policies) are applied simultaneously. To tackle this challenge, we propose Causal Graph Ordinary Differential Equations (CAG-ODE), a novel model that captures the continuous interaction among agents using a Graph Neural Network (GNN) as the ODE function. The key innovation of our model is to learn time-dependent representations of treatments and incorporate them into the ODE function, enabling precise predictions of potential outcomes. To mitigate confounding bias, we further propose two domain adversarial learning-based objectives, which enable our model to learn balanced continuous representations that are not affected by treatments or interference. Experiments on two datasets (i.e., COVID-19 and tumor growth) demonstrate the superior performance of our proposed model.

Keywords

Cite

@article{arxiv.2403.00178,
  title  = {Causal Graph ODE: Continuous Treatment Effect Modeling in Multi-agent Dynamical Systems},
  author = {Zijie Huang and Jeehyun Hwang and Junkai Zhang and Jinwoo Baik and Weitong Zhang and Dominik Wodarz and Yizhou Sun and Quanquan Gu and Wei Wang},
  journal= {arXiv preprint arXiv:2403.00178},
  year   = {2024}
}
R2 v1 2026-06-28T15:05:22.631Z