English

Forests for Differences: Robust Causal Inference Beyond Parametric DiD

Methodology 2025-06-10 v2 Machine Learning Machine Learning

Abstract

This paper introduces the Difference-in-Differences Bayesian Causal Forest (DiD-BCF), a novel non-parametric model addressing key challenges in DiD estimation, such as staggered adoption and heterogeneous treatment effects. DiD-BCF provides a unified framework for estimating Average (ATE), Group-Average (GATE), and Conditional Average Treatment Effects (CATE). A core innovation, its Parallel Trends Assumption (PTA)-based reparameterization, enhances estimation accuracy and stability in complex panel data settings. Extensive simulations demonstrate DiD-BCF's superior performance over established benchmarks, particularly under non-linearity, selection biases, and effect heterogeneity. Applied to U.S. minimum wage policy, the model uncovers significant conditional treatment effect heterogeneity related to county population, insights obscured by traditional methods. DiD-BCF offers a robust and versatile tool for more nuanced causal inference in modern DiD applications.

Keywords

Cite

@article{arxiv.2505.09706,
  title  = {Forests for Differences: Robust Causal Inference Beyond Parametric DiD},
  author = {Hugo Gobato Souto and Francisco Louzada Neto},
  journal= {arXiv preprint arXiv:2505.09706},
  year   = {2025}
}
R2 v1 2026-06-28T23:33:34.674Z