Fisher–Schultz Lecture: Generic Machine Learning Inference on Heterogeneous Treatment Effects in Randomized Experiments, With an Application to Immunization in India

IF 7.1 1区 经济学 Q1 ECONOMICS
Econometrica Pub Date : 2025-07-30 DOI:10.3982/ECTA19303
Victor Chernozhukov, Mert Demirer, Esther Duflo, Iván Fernández-Val
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引用次数: 0

Abstract

We propose strategies to estimate and make inference on key features of heterogeneous effects in randomized experiments. These key features include best linear predictors of the effects using machine learning proxies, average effects sorted by impact groups, and average characteristics of most and least impacted units. The approach is valid in high-dimensional settings, where the effects are proxied (but not necessarily consistently estimated) by predictive and causal machine learning methods. We post-process these proxies into estimates of the key features. Our approach is generic; it can be used in conjunction with penalized methods, neural networks, random forests, boosted trees, and ensemble methods, both predictive and causal. Estimation and inference are based on repeated data splitting to avoid overfitting and achieve validity. We use quantile aggregation of the results across many potential splits, in particular taking medians of p-values and medians and other quantiles of confidence intervals. We show that quantile aggregation lowers estimation risks over a single split procedure, and establish its principal inferential properties. Finally, our analysis reveals ways to build provably better machine learning proxies through causal learning: we can use the objective functions that we develop to construct the best linear predictors of the effects, to obtain better machine learning proxies in the initial step. We illustrate the use of both inferential tools and causal learners with a randomized field experiment that evaluates a combination of nudges to stimulate demand for immunization in India.

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Fisher-Schultz讲座:随机实验中异质治疗效果的通用机器学习推断,在印度的免疫应用
我们提出了在随机实验中估计和推断异质性效应关键特征的策略。这些关键特征包括使用机器学习代理的效果的最佳线性预测器,按影响组排序的平均效果,以及受影响最大和最小单位的平均特征。该方法在高维环境中是有效的,其中的效果是通过预测和因果机器学习方法来代理的(但不一定一致地估计)。我们将这些代理后处理成对关键特征的估计。我们的方法是通用的;它可以与惩罚方法、神经网络、随机森林、增强树和集合方法结合使用,包括预测性和因果性。估计和推理是基于重复的数据分割,以避免过拟合和达到有效性。我们在许多潜在的分割中使用结果的分位数聚合,特别是取p值的中位数和置信区间的中位数和其他分位数。我们证明了分位数聚合降低了单个分裂过程的估计风险,并建立了它的主要推论性质。最后,我们的分析揭示了通过因果学习构建可证明的更好的机器学习代理的方法:我们可以使用我们开发的目标函数来构建效果的最佳线性预测因子,在初始步骤中获得更好的机器学习代理。我们通过一项随机现场实验说明了推理工具和因果学习器的使用,该实验评估了在印度刺激免疫需求的推动组合。
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来源期刊
Econometrica
Econometrica 社会科学-数学跨学科应用
CiteScore
11.00
自引率
3.30%
发文量
75
审稿时长
6-12 weeks
期刊介绍: Econometrica publishes original articles in all branches of economics - theoretical and empirical, abstract and applied, providing wide-ranging coverage across the subject area. It promotes studies that aim at the unification of the theoretical-quantitative and the empirical-quantitative approach to economic problems and that are penetrated by constructive and rigorous thinking. It explores a unique range of topics each year - from the frontier of theoretical developments in many new and important areas, to research on current and applied economic problems, to methodologically innovative, theoretical and applied studies in econometrics. Econometrica maintains a long tradition that submitted articles are refereed carefully and that detailed and thoughtful referee reports are provided to the author as an aid to scientific research, thus ensuring the high calibre of papers found in Econometrica. An international board of editors, together with the referees it has selected, has succeeded in substantially reducing editorial turnaround time, thereby encouraging submissions of the highest quality. We strongly encourage recent Ph. D. graduates to submit their work to Econometrica. Our policy is to take into account the fact that recent graduates are less experienced in the process of writing and submitting papers.
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