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arxiv: 1003.0470 · v2 · submitted 2010-03-01 · 💻 cs.LG

Unsupervised Supervised Learning II: Training Margin Based Classifiers without Labels

classification 💻 cs.LG
keywords classifiersdatarisklabeledlearningtrainingboostingcomputed
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Many popular linear classifiers, such as logistic regression, boosting, or SVM, are trained by optimizing a margin-based risk function. Traditionally, these risk functions are computed based on a labeled dataset. We develop a novel technique for estimating such risks using only unlabeled data and the marginal label distribution. We prove that the proposed risk estimator is consistent on high-dimensional datasets and demonstrate it on synthetic and real-world data. In particular, we show how the estimate is used for evaluating classifiers in transfer learning, and for training classifiers with no labeled data whatsoever.

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