Uniform Consistency of the Highly Adaptive Lasso Estimator of Infinite Dimensional Parameters
Mark J. van der Laan, Aur\'elien F. Bibaut

TL;DR
This paper proves that the Highly-Adaptive-Lasso estimator for infinite-dimensional parameters is uniformly consistent under weak conditions, extending previous results on its convergence rate.
Contribution
It establishes the uniform consistency of the HAL-estimator for infinite-dimensional parameters under weak continuity assumptions, broadening its theoretical guarantees.
Findings
HAL-estimator is uniformly consistent under certain conditions.
It maintains a convergence rate faster than n^{-1/2}.
Applicability to nonparametric models is confirmed.
Abstract
Consider the case that we observe independent and identically distributed copies of a random variable with a probability distribution known to be an element of a specified statistical model. We are interested in estimating an infinite dimensional target parameter that minimizes the expectation of a specified loss function. In \cite{generally_efficient_TMLE} we defined an estimator that minimizes the empirical risk over all multivariate real valued cadlag functions with variation norm bounded by some constant in the parameter space, and selects with cross-validation. We referred to this estimator as the Highly-Adaptive-Lasso estimator due to the fact that the constrained can be formulated as a bound on the sum of the coefficients a linear combination of a very large number of basis functions. Specifically, in the case that the target parameter is a conditional mean, then…
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Taxonomy
TopicsStochastic processes and financial applications · Statistical Methods and Inference
