A Generalized Neyman-Pearson Criterion for Optimal Domain Adaptation

3 Oct 2018Clayton Scott

In the problem of domain adaptation for binary classification, the learner is presented with labeled examples from a source domain, and must correctly classify unlabeled examples from a target domain, which may differ from the source. Previous work on this problem has assumed that the performance measure of interest is the expected value of some loss function... (read more)

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