Semisupervised methods are techniques for using labeled data together with unlabeled data to make predictions. These methods invoke some assumptions that link the marginal distribution of X to the regression function f(x). For example, it is common to assume that f is very smooth over high density regions of . Many of the methods are ad-hoc and have been shown to work in specific examples but are lacking a theoretical foundation. We provide a minimax framework for analyzing semisupervised methods. In particular, we study methods based on metrics that are sensitive to the distribution . Our model includes a parameter that controls the strength of the semisupervised assumption. We then use the data to adapt to .
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