English

Instrumental Variable Estimation for Causal Inference in Longitudinal Data with Time-Dependent Latent Confounders

Machine Learning 2023-12-13 v1 Artificial Intelligence Methodology

Abstract

Causal inference from longitudinal observational data is a challenging problem due to the difficulty in correctly identifying the time-dependent confounders, especially in the presence of latent time-dependent confounders. Instrumental variable (IV) is a powerful tool for addressing the latent confounders issue, but the traditional IV technique cannot deal with latent time-dependent confounders in longitudinal studies. In this work, we propose a novel Time-dependent Instrumental Factor Model (TIFM) for time-varying causal effect estimation from data with latent time-dependent confounders. At each time-step, the proposed TIFM method employs the Recurrent Neural Network (RNN) architecture to infer latent IV, and then uses the inferred latent IV factor for addressing the confounding bias caused by the latent time-dependent confounders. We provide a theoretical analysis for the proposed TIFM method regarding causal effect estimation in longitudinal data. Extensive evaluation with synthetic datasets demonstrates the effectiveness of TIFM in addressing causal effect estimation over time. We further apply TIFM to a climate dataset to showcase the potential of the proposed method in tackling real-world problems.

Keywords

Cite

@article{arxiv.2312.07175,
  title  = {Instrumental Variable Estimation for Causal Inference in Longitudinal Data with Time-Dependent Latent Confounders},
  author = {Debo Cheng and Ziqi Xu and Jiuyong Li and Lin Liu and Jixue Liu and Wentao Gao and Thuc Duy Le},
  journal= {arXiv preprint arXiv:2312.07175},
  year   = {2023}
}

Comments

13 pages, 7 figures and 3 tables

R2 v1 2026-06-28T13:48:15.881Z