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BGM-IV: an AI-powered Bayesian generative modeling approach for instrumental variable analysis

Machine Learning 2026-05-11 v1 Artificial Intelligence Machine Learning Methodology

Abstract

Instrumental-variable (IV) regression enables causal estimation under endogeneity, but modern IV problems often involve nonlinear structural effects and high-dimensional covariates. Existing nonlinear IV methods directly learn the causal relation in observed feature space or rely on learned representations within two-stage or moment-based procedures, which can struggle when the causal information is embedded in a high-dimensional representation. We propose BGM-IV, a latent Bayesian generative modeling approach that reframes nonlinear IV regression as posterior inference in a causally structured latent space. BGM-IV infers latent components that separately capture shared confounding structure, outcome-specific variation, treatment-specific variation, and covariate-only nuisance information. To account for endogeneity, BGM-IV replaces the confounded outcome likelihood with an IV-integrated pseudo-likelihood that averages over instrument-induced treatment values within the latent model. Across various benchmark datasets, BGM-IV remains competitive in the classical low-dimensional regime and performs best in high-dimensional covariate regimes. Together, these results show that structured latent generative modeling provides a principled and effective strategy to nonlinear IV estimation with rich covariates. The code of BGM-IV is available at https://github.com/liuq-lab/BGM-IV.

Keywords

Cite

@article{arxiv.2605.07029,
  title  = {BGM-IV: an AI-powered Bayesian generative modeling approach for instrumental variable analysis},
  author = {Guyue Luo and Qiao Liu},
  journal= {arXiv preprint arXiv:2605.07029},
  year   = {2026}
}
R2 v1 2026-07-01T12:56:31.710Z