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Inference on function-valued parameters using a restricted score test

Inference on function-valued parameters using a restricted score test

来源:Arxiv_logoArxiv
英文摘要

It is often of interest to make inference on an unknown function that is a local parameter of the data-generating mechanism, such as a density or regression function. Such estimands can typically only be estimated at a slower-than-parametric rate in nonparametric and semiparametric models, and performing calibrated inference can be challenging. In many cases, these estimands can be expressed as the minimizer of a population risk functional. Here, we propose a general framework that leverages such representation and provides a nonparametric extension of the score test for inference on an infinite-dimensional risk minimizer. We demonstrate that our framework is applicable in a wide variety of problems. As both analytic and computational examples, we describe how to use our general approach for inference on a mean regression function under (i) nonparametric and (ii) partially additive models, and evaluate the operating characteristics of the resulting procedures via simulations.

Aaron Hudson、Marco Carone、Ali Shojaie

数学

Aaron Hudson,Marco Carone,Ali Shojaie.Inference on function-valued parameters using a restricted score test[EB/OL].(2021-05-14)[2025-05-21].https://arxiv.org/abs/2105.06646.点此复制

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