MMODELYST
Papers/Data-Driven Covariate Selection for Nonparametric and Cycle-Agnostic Causal Effect Estimation
PAP

Data-Driven Covariate Selection for Nonparametric and Cycle-Agnostic Causal Effect Estimation

May 7, 2026

arXiv
Abstract

Estimating causal effects from observational data requires identifying valid adjustment sets. This task is especially challenging in realistic settings where latent confounding and feedback loops are present. Existing approaches typically assume acyclicity or rely on global causal structure learning, limiting applicability and computational efficiency. In this work, we study a local, data-driven method for covariate selection based on conditional independence information. While this method is known to be sound and complete in acyclic causal models, its validity in the presence of cycles has remained unclear. Our main contribution is to show that these guarantees extend to cyclic causal models. In particular, our result relies on the invariance of conditional independence assertions under $σ$-acyclification. These findings establish a unified, cycle-agnostic perspective on covariate selection and causal effect estimation, showing that the method applies across cyclic and acyclic settings without modification. Empirically, we validate this on extensive synthetic data, showing reliable performance in cyclic causal models.

Select text to highlight · click a highlight to remove · saved in this browser only
Authors
Ana Leticia Garcez Vicente, Gijs van Seeventer, Saber Salehkaleybar
Your notes (browser-local)
saved
arXiv:2605.06385