Canonical Least Favorable Submodels:A New TMLE Procedure for Multidimensional Parameters

11/03/2018
by   Jonathan Levy, et al.
0

This paper is a fundamental addition to the world of targeted maximum likelihood estimation (TMLE) (or likewise, targeted minimum loss estimation) for simultaneous estimation of multi-dimensional parameters of interest. TMLE, as part of the targeted learning framework, offers a crucial step in constructing efficient plug-in estimators for nonparametric or semiparametric models. The so-called targeting step of targeted learning, involves fluctuating the initial fit of the model in a way that maximally adjusts the plug-in estimate per change in the log likelihood. Previously for multidimensional parameters of interest, iterative TMLE's were constructed using locally least favorable submodels as defined in van der Laan and Gruber, 2016, which are indexed by a multidimensional fluctuation parameter. In this paper we define a canonical least favorable submodel in terms of a single dimensional epsilon for a d-dimensional parameter of interest. One can view the clfm as the iterative analog to the one-step TMLE as constructed in van der Laan and Gruber, 2016. It is currently implemented in several software packages we provide in the last section. Using a single epsilon for the targeting step in TMLE could be useful for high dimensional parameters, where using a fluctuation parameter of the same dimension as the parameter of interest could suffer the consequences of curse of dimensionality. The clfm also enables placing the so-called clever covariate denominator as an inverse weight in an offset intercept model. It has been shown that such weighting mitigates the effect of large inverse weights sometimes caused by near positivity violations.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/26/2018

One-step Targeted Maximum Likelihood for Time-to-event Outcomes

Current targeted maximum likelihood estimation methods used to analyze t...
research
07/04/2021

One-step TMLE to target cause-specific absolute risks and survival curves

This paper considers one-step targeted maximum likelihood estimation met...
research
06/14/2023

Kernel Debiased Plug-in Estimation

We consider the problem of estimating a scalar target parameter in the p...
research
01/25/2023

Inference in Marginal Structural Models by Automatic Targeted Bayesian and Minimum Loss-Based Estimation

Two of the principle tasks of causal inference are to define and estimat...
research
11/12/2018

An Easy Implementation of CV-TMLE

In the world of targeted learning, cross-validated targeted maximum like...
research
05/03/2023

Semi-Parametric Identification and Estimation of Interaction and Effect Modification in Mixed Exposures using Stochastic Interventions

In many fields, including environmental epidemiology, researchers strive...

Please sign up or login with your details

Forgot password? Click here to reset