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Entropy balancing is doubly robust
Covariate balance is a conventional key diagnostic for methods used
estimating causal effects from observational studies. Recently, there is an
emerging interest in directly incorporating covariate balance in the
estimation. We study a recently proposed entropy maximization method called
Entropy Balancing (EB), which exactly matches the covariate moments for the
different experimental groups in its optimization problem. We show 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. This is surprising to us because
there is no attempt to model the outcome or the treatment assignment in the
original proposal of EB. Our theoretical results and simulations suggest that
EB is a very appealing alternative to the conventional weighting estimators
that estimate the propensity score by maximum likelihood.Comment: 23 pages, 6 figures, Journal of Causal Inference 201
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