Discriminative learning for differing training and test distributions 论文
2007引用 386
Imbalanced Data Classification TechniquesMachine Learning and Data ClassificationMachine Learning and Algorithms
摘要
We address classification problems for which the training instances are governed by a distribution that is allowed to differ arbitrarily from the test distribution---problems also referred to as classification under covariate shift. We derive a solution that is purely discriminative: neither training nor test distribution are modeled explicitly. We formulate the general problem of learning under covariate shift as an integrated optimization problem. We derive a kernel logistic regression classifier for differing training and test distributions.