NonProbEst - Estimation in Nonprobability Sampling
Different inference procedures are proposed in the
literature to correct for selection bias that might be
introduced with non-random selection mechanisms. A class of
methods to correct for selection bias is to apply a statistical
model to predict the units not in the sample (super-population
modeling). Other studies use calibration or Statistical
Matching (statistically match nonprobability and probability
samples). To date, the more relevant methods are weighting by
Propensity Score Adjustment (PSA). The Propensity Score
Adjustment method was originally developed to construct weights
by estimating response probabilities and using them in
Horvitz–Thompson type estimators. This method is usually used
by combining a non-probability sample with a reference sample
to construct propensity models for the non-probability sample.
Calibration can be used in a posterior way to adding
information of auxiliary variables. Propensity scores in PSA
are usually estimated using logistic regression models. Machine
learning classification algorithms can be used as alternatives
for logistic regression as a technique to estimate
propensities. The package 'NonProbEst' implements some of these
methods and thus provides a wide options to work with data
coming from a non-probabilistic sample.