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Globally efficient non-parametric inference of average treatment effects by empirical balancing calibration weighting

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TLDR
The results show that efficiency can be achieved by solely balancing the covariate distributions without resorting to direct estimation of propensity score or outcome regression function, and the proposed variance estimator outperforms existing estimators that require a direct approximation of the efficient influence function.
Abstract
The estimation of average treatment effects based on observational data is extremely important in practice and has been studied by generations of statisticians under different frameworks. Existing globally efficient estimators require non-parametric estimation of a propensity score function, an outcome regression function or both, but their performance can be poor in practical sample sizes. Without explicitly estimating either functions, we consider a wide class calibration weights constructed to attain an exact three-way balance of the moments of observed covariates among the treated, the control, and the combined group. The wide class includes exponential tilting, empirical likelihood and generalized regression as important special cases, and extends survey calibration estimators to different statistical problems and with important distinctions. Global semiparametric efficiency for the estimation of average treatment effects is established for this general class of calibration estimators. The results show that efficiency can be achieved by solely balancing the covariate distributions without resorting to direct estimation of propensity score or outcome regression function. We also propose a consistent estimator for the efficient asymptotic variance, which does not involve additional functional estimation of either the propensity score or the outcome regression functions. The proposed variance estimator outperforms existing estimators that require a direct approximation of the efficient influence function.

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Citations
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Journal ArticleDOI

Approximate residual balancing: debiased inference of average treatment effects in high dimensions

TL;DR: A method for debiasing penalized regression adjustments to allow sparse regression methods like the lasso to be used for √n‐consistent inference of average treatment effects in high dimensional linear models.
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Covariate balancing propensity score for a continuous treatment: Application to the efficacy of political advertisements

TL;DR: The covariate balancing generalized propensity score (CBGPS) methodology is proposed, which minimizes the association between covariates and the treatment, and both parametric and nonparametric approaches show their superior performance over the standard maximum likelihood estimation in a simulation study.
Journal ArticleDOI

Entropy Balancing is Doubly Robust

TL;DR: This article proposed an entropy maximization method called Entropy Balancing (EB), which exactly matches the covariate moments for the different experimental groups in its optimization problem and showed EB is doubly robust with respect to linear outcome regression and logistic propensity score regression, and it reaches the asymptotic semiparametric variance bound when both regressions are correctly specified.
Journal ArticleDOI

Covariate balancing propensity score by tailored loss functions

Qingyuan Zhao
- 01 Apr 2019 - 
TL;DR: In this article, the authors proposed covariate balancing scoring rules (CBSR) to estimate the propensity score, which is uniquely determined by the link function in the GLM and the estimand (a weighted average treatment effect).
Journal ArticleDOI

Suicide prediction models: a critical review of recent research with recommendations for the way forward

TL;DR: It is argued that the only way to resolve uncertainty is to link future efforts to develop or evaluate suicide prediction tools with concrete questions about specific clinical decisions aimed at reducing suicides and to evaluate the clinical value of these tools in terms of net benefit rather than sensitivity or positive predictive value.
References
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Journal ArticleDOI

The central role of the propensity score in observational studies for causal effects

Paul R. Rosenbaum, +1 more
- 01 Apr 1983 - 
TL;DR: The authors discusses the central role of propensity scores and balancing scores in the analysis of observational studies and shows that adjustment for the scalar propensity score is sufficient to remove bias due to all observed covariates.
Journal ArticleDOI

Male-Female Wage Differentials in Urban Labor Markets

TL;DR: In this article, the authors estimate the average extent of discrimination against female workers in the United States and provide a quantitative assessment of the sources of male-female wage differentials in the same occupation.
Journal ArticleDOI

Wage Discrimination: Reduced Form and Structural Estimates

TL;DR: In this paper, a distinction is drawn between reduced form and structural wage equations, and both are estimated They are shown to have very different implications for analyzing the white-black and male-female wage differentials.
Journal ArticleDOI

Constructing a Control Group Using Multivariate Matched Sampling Methods That Incorporate the Propensity Score

TL;DR: This article used multivariate matching methods in an observational study of the effects of prenatal exposure to barbiturates on subsequent psychological development, using the propensity score as a distinct matching variable.
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