sambia - A Collection of Techniques Correcting for Sample Selection Bias
A collection of various techniques correcting statistical
models for sample selection bias is provided. In particular,
the resampling-based methods "stochastic inverse-probability
oversampling" and "parametric inverse-probability bagging" are
placed at the disposal which generate synthetic observations
for correcting classifiers for biased samples resulting from
stratified random sampling. For further information, see the
article Krautenbacher, Theis, and Fuchs (2017)
<doi:10.1155/2017/7847531>. The methods may be used for further
purposes where weighting and generation of new observations is
needed.