使用倾向得分校准的双重/去偏机器学习改进平均处理效应的有限样本估计

Improving the Finite Sample Estimation of Average Treatment Effects Using Double/Debiased Machine Learning With Propensity Score Calibration

Journal of Applied Econometrics · 2026
被引 0 · 同刊同年前 5%
人大 AABS 3

中文导读

研究了将倾向得分校准方法集成到双重/去偏机器学习框架中,通过模拟证明校准后的倾向得分能显著降低平均处理效应估计的均方根误差,同时保持渐近性质。

Abstract

ABSTRACT Double/debiased machine learning (DML) uses for estimating an average treatment effect (ATE) a double‐robust score function that relies on the prediction of nuisance functions, such as the propensity score, which is the probability of treatment assignment given covariates. Estimators relying on double‐robust score functions are highly sensitive to errors in propensity score predictions. Machine learning algorithms have been found to produce models that often overestimate or underestimate these probabilities. Several calibration approaches have been proposed to improve probabilistic forecasts of machine learners. This paper explores their integration into the DML framework, showing via simulations that using calibrated propensity scores significantly reduces the root mean squared error of ATE estimates in finite samples while preserving DML's asymptotic properties.

双机器学习倾向得分校准平均处理效应有限样本估计