Event-driven continuous time bayesian networks
Debarun Bhattacharjya, Karthikeyan Shanmugam, et al.
AAAI 2020
The assumption of positivity in causal inference (also known as common support and co-variate overlap) is necessary to obtain valid causal estimates. Therefore, confirming it holds in a given dataset is an important first step of any causal analysis. Most common methods to date are insufficient for discovering nonpositivity, as they do not scale for modern high-dimensional covariate spaces, or they cannot pinpoint the subpopulation violating positivity. To overcome these issues, we suggest to harness decision trees for detecting violations. By dividing the covariate space into mutually exclusive regions, each with maximized homogeneity of treatment groups, decision trees can be used to automatically detect subspaces violating positivity. By augmenting the method with an additional random forest model, we can quantify the robustness of the violation within each subspace. This solution is scalable and provides an interpretable characterization of the subspaces in which violations occur. We provide a visualization of the stratification rules that define each subpopulation, combined with the severity of positivity violation within it. We also provide an interactive version of the visualization that allows a deeper dive into the properties of each subspace.
Debarun Bhattacharjya, Karthikeyan Shanmugam, et al.
AAAI 2020
Praveen Venkateswaran, Vinod Muthusamy, et al.
KDD 2021
Rui Chen, Sanjeeb Dash, et al.
ICML 2021
Junkyu Lee, Tian Gao, et al.
AAAI 2025