Nonparametric Heterogeneous Long-term Causal Effect Estimation via Data Combination
Chen, Weilin, Cai, Ruichu, Wan, Junjie, Yang, Zeqin, Hernández-Lobato, José Miguel
–arXiv.org Artificial Intelligence
Long-term causal inference has drawn increasing attention in many scientific domains. Existing methods mainly focus on estimating average long-term causal effects by combining long-term observational data and short-term experimental data. However, it is still understudied how to robustly and effectively estimate heterogeneous long-term causal effects, significantly limiting practical applications. In this paper, we propose several two-stage style nonparametric estimators for heterogeneous long-term causal effect estimation, including propensity-based, regression-based, and multiple robust estimators. We conduct a comprehensive theoretical analysis of their asymptotic properties under mild assumptions, with the ultimate goal of building a better understanding of the conditions under which some estimators can be expected to perform better. Extensive experiments across several semi-synthetic and real-world datasets validate the theoretical results and demonstrate the effectiveness of the proposed estimators.
arXiv.org Artificial Intelligence
Mar-2-2025
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