» Articles » PMID: 36819070

Model-assisted Estimation in High-dimensional Settings for Survey Data

Overview
Journal J Appl Stat
Specialty Public Health
Date 2023 Feb 23
PMID 36819070
Authors
Affiliations
Soon will be listed here.
Abstract

Model-assisted estimators have attracted a lot of attention in the last three decades. These estimators attempt to make an efficient use of auxiliary information available at the estimation stage. A working model linking the survey variable to the auxiliary variables is specified and fitted on the sample data to obtain a set of predictions, which are then incorporated in the estimation procedures. A nice feature of model-assisted procedures is that they maintain important design properties such as consistency and asymptotic unbiasedness irrespective of whether or not the working model is correctly specified. In this article, we examine several model-assisted estimators from a design-based point of view and in a high-dimensional setting, including linear regression and penalized estimators. We conduct an extensive simulation study using data from the Irish Commission for Energy Regulation Smart Metering Project, to assess the performance of several model-assisted estimators in terms of bias and efficiency in this high-dimensional data set.

Citing Articles

Editorial to the special issue: Statistical Approaches for Big Data and Machine Learning.

Zhao Y, Chen C, Feng F, Pamucar D J Appl Stat. 2023; 50(3):451-455.

PMID: 36819088 PMC: 9930862. DOI: 10.1080/02664763.2023.2162471.

References
1.
Ta T, Shao J, Li Q, Wang L . Generalized Regression Estimators with High-Dimensional Covariates. Stat Sin. 2020; 30(3):1135-1154. PMC: 7313320. DOI: 10.5705/ss.202017.0384. View