Nonparametric inference on non-negative dissimilarity measures at the boundary of the parameter space

06/13/2023
by   Aaron Hudson, et al.
0

It is often of interest to assess whether a function-valued statistical parameter, such as a density function or a mean regression function, is equal to any function in a class of candidate null parameters. This can be framed as a statistical inference problem where the target estimand is a scalar measure of dissimilarity between the true function-valued parameter and the closest function among all candidate null values. These estimands are typically defined to be zero when the null holds and positive otherwise. While there is well-established theory and methodology for performing efficient inference when one assumes a parametric model for the function-valued parameter, methods for inference in the nonparametric setting are limited. When the null holds, and the target estimand resides at the boundary of the parameter space, existing nonparametric estimators either achieve a non-standard limiting distribution or a sub-optimal convergence rate, making inference challenging. In this work, we propose a strategy for constructing nonparametric estimators with improved asymptotic performance. Notably, our estimators converge at the parametric rate at the boundary of the parameter space and also achieve a tractable null limiting distribution. As illustrations, we discuss how this framework can be applied to perform inference in nonparametric regression problems, and also to perform nonparametric assessment of stochastic dependence.

READ FULL TEXT
research
06/13/2023

An Approach to Nonparametric Inference on the Causal Dose Response Function

The causal dose response curve is commonly selected as the statistical p...
research
05/14/2021

Inference on function-valued parameters using a restricted score test

It is often of interest to make inference on an unknown function that is...
research
04/21/2022

The θ-augmented model for Bayesian semiparametric inference on functional parameters

Semiparametric Bayesian inference has so far relied on models for the ob...
research
09/09/2019

Convergence of least squares estimators in the adaptive Wynn algorithm for a class of nonlinear regression models

The paper continues the authors' work on the adaptive Wynn algorithm in ...
research
11/02/2017

Selective inference for the problem of regions via multiscale bootstrap

Selective inference procedures are considered for computing approximatel...
research
01/03/2023

Testing High-dimensional Multinomials with Applications to Text Analysis

Motivated by applications in text mining and discrete distribution infer...
research
06/14/2023

Kernel Debiased Plug-in Estimation

We consider the problem of estimating a scalar target parameter in the p...

Please sign up or login with your details

Forgot password? Click here to reset