Correcting Selection Bias in Big Data by Pseudo-Weighting

Author:

Liu An-Chiao1ORCID,Scholtus Sander2,De Waal Ton3

Affiliation:

1. Tilburg University PhD candidate at the Department of Methodology and Statistics, , Tilburg, The Netherlands, and Process Development and Methodology Department, Statistics Netherlands, The Hague, The Netherlands

2. Statistics Netherlands Methodologist at the Process Development and Methodology Department, , The Hague, The Netherlands

3. Senior Methodologist at the Process Development and Methodology Department Full Professor at the Department of Methodology and Statistics, Tilburg University, Tilburg, The Netherlands, and a , Statistics Netherlands, The Hague, The Netherlands

Abstract

Abstract Nonprobability samples, for example observational studies, online opt-in surveys, or register data, do not come from a sampling design and therefore may suffer from selection bias. To correct for selection bias, Elliott and Valliant (EV) proposed a pseudo-weight estimation method that applies a two-sample setup for a probability sample and a nonprobability sample drawn from the same population, sharing some common auxiliary variables. By estimating the propensities of inclusion in the nonprobability sample given the two samples, we may correct the selection bias by (pseudo) design-based approaches. This paper expands the original method, allowing for large sampling fractions in either sample or for high expected overlap between selected units in each sample, conditions often present in administrative data sets and more frequently occurring with Big Data.

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Statistics, Probability and Uncertainty,Social Sciences (miscellaneous),Statistics and Probability

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