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Tutorial: Deriving The Efficient Influence Curve for Large Models

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arxiv 1903.01706 v3 pith:4PTJXLKQ submitted 2019-03-05 math.ST stat.MEstat.OTstat.TH

Tutorial: Deriving The Efficient Influence Curve for Large Models

classification math.ST stat.MEstat.OTstat.TH
keywords influencetutorialestimatorsmodelsderivingefficientestimatorfunctions
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper aims to provide a tutorial for upper level undergraduate and graduate students in statistics, biostatistics and epidemiology on deriving influence functions for non-parametric and semi-parametric models. The author will build on previously known efficiency theory and provide a useful identity and formulaic technique only relying on the basics of integration which, are self-contained in this tutorial and can be used in most any setting one might encounter in practice. The paper provides many examples of such derivations for well-known influence functions as well as for new parameters of interest. The influence function remains a central object for constructing efficient estimators for large models, such as the one-step estimator and the targeted maximum likelihood estimator. We will not touch upon these estimators at all but readers familiar with these estimators might find this tutorial of particular use.

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