Repository logo
 

Topics in estimation for messy surveys: imperfect matching and nonprobability sampling

Date

2022

Authors

Huang, Chien-Min, author
Breidt, F. Jay, advisor
Wang, Haonan, committee member
Keller, Joshua, committee member
Pallickara, Sangmi, committee member

Journal Title

Journal ISSN

Volume Title

Abstract

Two problems in estimation for "messy" surveys are addressed, both requiring the combination of survey data with other data sources. The first estimation problem involves the combination of survey data with auxiliary data, when the matching of the two sources is imperfect. Model-assisted survey regression estimators combine auxiliary information available at a population level with complex survey data to estimate finite population parameters. Many prediction methods, including linear and mixed models, nonparametric regression, and machine learning techniques, can be incorporated into such model-assisted estimators. These methods assume that observations obtained for the sample can be matched without error to the auxiliary data. We investigate properties of estimators that rely on matching algorithms that do not in general yield perfect matches. We focus on difference estimators, which are exactly unbiased under perfect matching but not under imperfect matching. The methods are investigated analytically and via simulation, using a study of recreational angling in South Carolina to build a simulation population. In this study, the survey data come from a stratified, two-stage sample and the auxiliary data from logbooks filed by boat captains. Extensions to multiple frame estimators under imperfect matching are discussed. The second estimation problem involves the combination of survey data from a probability sample with additional data from a nonprobability sample. The problem is motivated by an application in which field crews are allowed to use their judgment in selecting part of a sample. Many surveys are conducted in two or more stages, with the first stage of primary sampling units dedicated to screening for secondary sampling units of interest, which are then measured or subsampled. The Large Pelagics Intercept Survey, conducted by the United States National Marine Fisheries Service, draws a probability sample of fishing access site-days in the first stage and screens for relatively rare fishing trips that target pelagic species (tuna, sharks, billfish, etc.). Many site-days yield no pelagic trips. Motivated by this low yield, we consider surveys that allow expert judgment in the selection of some site-days. This nonprobability judgment sample is combined with a probability sample to generate likelihood-based estimates of inclusion probabilities and estimators of population totals that are related to dual-frame estimators. Consistency and asymptotic normality of the estimators are established under the correct specification of the model for judgment behavior. An extensive simulation study shows the robustness of the methodology to misspecification of the judgment behavior. A standard variance estimator, readily available in statistical software, yields stable estimates with small negative bias and good confidence interval coverage. Across a range of conditions, the proposed strategy that allows for some judgment dominates the classic strategy of pure probability sampling with known design weights. The methodology is extended to a doubly-robust version that uses both a propensity model for judgment selection probabilities and a regression model for study variable characteristics. If either model is correctly specified, the doubly-robust estimator is unbiased. The dual-frame methodology for samples incorporating expert judgment is then extended to two other nonprobability settings: respondent-driven sampling and biased-frame sampling.

Description

Rights Access

Subject

Citation

Associated Publications