Title of article :
Correcting Classifiers for Sample Selection Bias in Two-Phase Case-Control Studies
Author/Authors :
Krautenbacher, Norbert Department of Mathematics - Technische Universitat Munchen - Munich, Germany , Theis, Fabian J Department of Mathematics - Technische Universitat Munchen - Munich, Germany , Fuchs, Christiane Department of Mathematics - Technische Universitat Munchen - Munich, Germany
Abstract :
Epidemiological studies often utilize stratified data in which rare outcomes or exposures are artificially enriched. This design can
increase precision in association tests but distorts predictions when applying classifiers on nonstratified data. Several methods
correct for this so-called sample selection bias, but their performance remains unclear especially for machine learning classifiers.
With an emphasis on two-phase case-control studies, we aim to assess which corrections to perform in which setting and to obtain
methods suitable for machine learning techniques, especially the random forest. We propose two new resampling-based methods to
resemble the original data and covariance structure: stochastic inverse-probability oversampling and parametric inverse-probability
bagging. We compare all techniques for the random forest and other classifiers, both theoretically and on simulated and real data.
Empirical results show that the random forest profits from only the parametric inverse-probability bagging proposed by us. For
other classifiers, correction is mostly advantageous, and methods perform uniformly. We discuss consequences of inappropriate
distribution assumptions and reason for different behaviors between the random forest and other classifiers. In conclusion, we
provide guidance for choosing correction methods when training classifiers on biased samples. For random forests, our method
outperforms state-of-the-art procedures if distribution assumptions are roughly fulfilled. We provide our implementation in the R
package sambia.
Keywords :
Case-Control , Two-Phase , Sample
Journal title :
Computational and Mathematical Methods in Medicine