Estimating response propensities in nonprobability surveys using machine learning weighted models
Metadata
Show full item recordEditorial
Elsevier
Materia
Propensity score adjustment Design weights Nonprobability samples
Date
2024-06-22Referencia bibliográfica
Ferri García, R. et. al. 225 (2024) 779–793. [https://doi.org/10.1016/j.matcom.2024.06.012]
Sponsorship
PDC2022-133293-I00 funded by MCIN/AEI/10.13039/501100011033 and the European Union ‘‘NextGenerationEU’’/PRTR; Consejería de Universidad, Investigación e Innovación (C-EXP-153-UGR23, Andalusia, Spain), Plan Propio de Investigación 𝑦���� Transferencia (PPJIA2023-030, University of Granada); IMAG-Maria de Maeztu CEX2020-001105-M/AEI/10.13039/501100011033; Ministerio de Educación 𝑦�� Ciencia (PRE2022-103200) associated with the aforementioned IMAG-Maria; Universidad de Granada / CBUA.Abstract
Propensity Score Adjustment (PSA) is a widely accepted method to reduce selection bias
in nonprobability samples. In this approach, the (unknown) response probability of each
individual is estimated in a nonprobability sample, using a reference probability sample. This,
the researcher obtains a representation of the target population, reflecting the differences (for
a set of auxiliary variables) between the population and the nonprobability sample, from which
response probabilities can be estimated.
Auxiliary probability samples are usually produced by surveys with complex sampling
designs, meaning that the use of design weights is crucial to accurately calculate response
probabilities. When a linear model is used for this task, maximising a pseudo log-likelihood
function which involves design weights provides consistent estimates for the inverse probability
weighting estimator. However, little is known about how design weights may benefit the
estimates when techniques such as machine learning classifiers are used.
This study aims to investigate the behaviour of Propensity Score Adjustment with machine
learning classifiers, subject to the use of weights in the modelling step. A theoretical approximation
to the problem is presented, together with a simulation study highlighting the properties
of estimators using different types of weights in the propensity modelling step.