Weight smoothing for nonprobability surveys
Metadatos
Mostrar el registro completo del ítemAutor
Ferri García, RamónEditorial
Springer
Materia
Nonprobability samples Propensity score adjustment Tree-based inverse propensity-weighted estimator Weight smoothing
Fecha
2021-12-20Referencia bibliográfica
Ferri-García, R... [et al.]. Weight smoothing for nonprobability surveys. TEST (2021). [https://doi.org/10.1007/s11749-021-00795-7]
Patrocinador
Spanish Government PID2019-106861RB-I00/AEI/10.13039/501100011033; IMAG-Maria de Maeztu grant CEX2020-001105-M/AEI/10.13039/501100011033; Spanish Government; Universidad de Granada/CBUAResumen
Adjustment techniques to mitigate selection bias in nonprobability samples often
involve modelling the propensity to participate in the nonprobability sample along
with inverse propensity weighting. It is well known that procedures for estimating
weights are effective if the covariates selected in the propensity model are related
to both the variable of interest and the participation indicator. In most surveys, there
are many variables of interest, making weight adjustments difficult to determine as a
suitable weight for one variable may be unsuitable for other variables. The standard
compromise is to include a large number of covariates in the propensity model but
this may increase the variability of the estimates, especially when some covariates are
weakly related to the variables of interest. Weight smoothing, developed for probability
surveys, could be helpful in these situations. It aims to remove the variability
caused by overfit propensity models by replacing the inverse propensity weights with
predicted weights obtained using a smoothing model. In this article, we study weight
smoothing in the nonprobability survey context, both theoretically and empirically, to
understand its effectiveness at improving the efficiency of estimates.