Automatic Debiased Machine Learning of Causal and Structural Effects
成果类型:
Article
署名作者:
Chernozhukov, Victor; Newey, Whitney K.; Singh, Rahul
署名单位:
Massachusetts Institute of Technology (MIT); National Bureau of Economic Research
刊物名称:
ECONOMETRICA
ISSN/ISSBN:
0012-9682
DOI:
10.3982/ECTA18515
发表日期:
2022
页码:
967-1027
关键词:
MULTIVARIATE REGRESSION-MODELS
DEEP NEURAL-NETWORKS
confidence-intervals
Asymptotic Normality
EFFICIENCY BOUNDS
POST-SELECTION
inference
average
regions
identification
摘要:
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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