Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Disentangled Instrumental Variables for Causal Inference with Networked Observational Data

About

Instrumental variables (IVs) are crucial for addressing unobservable confounders, yet their stringent exogeneity assumptions pose significant challenges in networked data. Existing methods typically rely on modelling neighbour information when recovering IVs, thereby inevitably mixing shared environment-induced endogenous correlations and individual-specific exogenous variation, leading the resulting IVs to inherit dependence on unobserved confounders and to violate exogeneity. To overcome this challenge, we propose $\underline{Dis}$entangled $\underline{I}$nstrumental $\underline{V}$ariables (DisIV) framework, a novel method for causal inference based on networked observational data with latent confounders. DisIV exploits network homogeneity as an inductive bias and employs a structural disentanglement mechanism to extract individual-specific components that serve as latent IVs. The causal validity of the extracted IVs is constrained through explicit orthogonality and exclusion conditions. Extensive semi-synthetic experiments on real-world datasets demonstrate that DisIV consistently outperforms state-of-the-art baselines in causal effect estimation under network-induced confounding.

Zhirong Huang, Debo Cheng, Guixian Zhang, Yi Wang, Jiuyong Li, Shichao Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Causal InferenceBC within-sample
sqrt(PEHE)0.73
18
Causal InferenceBC out-of-sample
sqrt(PEHE)0.69
18
Causal InferenceFlickr (Within-Sample)
sqrt(PEHE)0.83
18
Causal InferenceFlickr (Out-of-Sample)
sqrt(PEHE)0.82
18
Showing 4 of 4 rows

Other info

Follow for update