• Medientyp: E-Book
  • Titel: Double/debiased machine learning for treatment and structural parameters
  • Beteiligte: Chernozhukov, Victor [VerfasserIn]; Chetverikov, Denis [VerfasserIn]; Demirer, Mert [VerfasserIn]; Duflo, Esther [VerfasserIn]; Hansen, Christian Bailey [VerfasserIn]; Newey, Whitney K. [VerfasserIn]; Robins, James [VerfasserIn]
  • Erschienen: London: Cemmap, Centre for Microdata Methods and Practice, The Institute for Fiscal Studies, Department of Economics, UCL, 02 June 2017
  • Erschienen in: Centre for Microdata Methods and Practice: CEMMAP working papers ; 2017,28
  • Umfang: 1 Online-Ressource (circa 72 Seiten); Illustrationen
  • Sprache: Englisch
  • DOI: 10.1920/wp.cem.2017.2817
  • Identifikator:
  • Schlagwörter: Kausalanalyse ; Ökonometrie ; Arbeitspapier ; Graue Literatur
  • Entstehung:
  • Anmerkungen:
  • Beschreibung: We revisit the classic semiparametric problem of inference on a low di-mensional parameter Ø0 in the presence of high-dimensional nuisance parameters π0. We depart from the classical setting by allowing for π0 to be so high-dimensional that the traditional assumptions, such as Donsker properties, that limit complexity of the parameter space for this object break down. To estimate π0, we consider the use of statistical or machine learning (ML) methods which are particularly well-suited to estimation in modern, very high-dimensional cases. ML methods perform well by employing regularization to reduce variance and trading off regularization bias with overfitting in practice. However, both regularization bias and overfitting in estimating π0 cause a heavy bias in estimators of Ø0 that are obtained by naively plugging ML estimators of π0 into estimating equations for Ø0. This bias results in the naive estimator failing to be N -1/2 consistent, where N is the sample size. We show that the impact of regularization bias and overfitting on estimation of the parameter of interest Ø0 can be removed by using two simple, yet critical, ingredients: (1) using Neyman-orthogonal moments/scores that have reduced sensitivity with respect to nuisance parameters to estimate Ø0, and (2) making use of cross-fitting which provides an efficient form of data-splitting. We call the resulting set of methods double or debiased ML (DML). We verify that DML delivers point estimators that concentrate in a N -1/2-neighborhood of the true parameter values and are approximately unbiased and normally distributed, which allows construction of valid confidence statements. The generic statistical theory of DML is elementary and simultaneously relies on only weak theoretical requirements which will admit the use of a broad array of modern ML methods for estimating the nuisance parameters such as random forests, lasso, ridge, deep neural nets, boosted trees, and various hybrids and ensembles of these methods. We illustrate the general theory by applying it to provide theoretical properties of DML applied to learn the main regression parameter in a partially linear regression model, DML applied to learn the coefficient on an endogenous variable in a partially linear instrumental variables model, DML applied to learn the average treatment effect and the average treatment effect on the treated under unconfoundedness, and DML applied to learn the local average treatment effect in an instrumental variables setting. In addition to these theoretical applications, we also illustrate the use of DML in three empirical examples.
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