因果和结构效应的自动去偏机器学习

IF 7.1 1区 经济学 Q1 ECONOMICS
Econometrica Pub Date : 2022-05-27 DOI:10.3982/ECTA18515
Victor Chernozhukov, Whitney K. Newey, Rahul Singh
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引用次数: 73

摘要

许多因果和结构性影响取决于回归。例子包括政策效应、平均导数、回归分解、平均治疗效应、因果中介和经济结构模型的参数。回归可能是高维的,使机器学习变得有用。由于正则化和/或模型选择的偏差,将机器学习器插入识别方程可能导致推理不良。本文给出了线性和非线性回归函数的自动去偏方法。在使用Lasso和感兴趣的函数时,去偏是自动的,而不需要完全形式的偏校正。去偏可以应用于任何回归学习器,包括神经网络、随机森林、Lasso、boosting和其他高维方法。除了提供偏差校正外,我们还给出了对错误指定具有鲁棒性的标准误差、偏差校正的收敛速度,以及结构和因果效应的各种估计量的估计量的渐近推断的原始条件。自动去偏机器学习用于估计新南威尔士州职业培训数据中被治疗者的平均治疗效果,并根据尼尔森扫描仪数据估计需求弹性,同时允许偏好与价格和收入相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Debiased Machine Learning of Causal and Structural Effects

Many causal and structural effects depend on regressions. Examples include policy effects, average derivatives, regression decompositions, average treatment effects, causal mediation, and parameters of economic structural models. The regressions may be high-dimensional, making machine learning useful. Plugging machine learners into identifying equations can lead to poor inference due to bias from regularization and/or model selection. This paper gives automatic debiasing for linear and nonlinear functions of regressions. The debiasing is automatic in using Lasso and the function of interest without the full form of the bias correction. The debiasing can be applied to any regression learner, including neural nets, random forests, Lasso, boosting, and other high-dimensional methods. In addition to providing the bias correction, we give standard errors that are robust to misspecification, convergence rates for the bias correction, and primitive conditions for asymptotic inference for estimators of a variety of estimators of structural and causal effects. The automatic debiased machine learning is used to estimate the average treatment effect on the treated for the NSW job training data and to estimate demand elasticities from Nielsen scanner data while allowing preferences to be correlated with prices and income.

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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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