Robust importance-weighted cross-validation under sample selection bias
2017-10-17Code Available0· sign in to hype
Wouter M. Kouw, Jesse H. Krijthe, Marco Loog
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Abstract
Cross-validation under sample selection bias can, in principle, be done by importance-weighting the empirical risk. However, the importance-weighted risk estimator produces sub-optimal hyperparameter estimates in problem settings where large weights arise with high probability. We study its sampling variance as a function of the training data distribution and introduce a control variate to increase its robustness to problematically large weights.