In the previous post, I worked my way through some key elements of TMLE theory as I try to understand how it all works. At its essence, TMLE is focused on getting the efficient influence function (EIF) to behave properly. When that happens, the estimator of the target parameter behaves as if it were based on a random sample from the true data-generating distribution.
Estimating the outcome and treatment (or exposure) models is an important part of constructing the EIF, but they are treated as nuisance components and do not need to be perfectly specified. The targeting step can adjust for errors in these nuisance estimates, often recovering the desired empirical behavior of the EIF and improving the resulting estimate of the target parameter, even when one of the nuisance models is misspecified.
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