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Unsupervised Supervised Learning II: Margin-Based Classification Without Labels

机译:无监督的监督学习II:无标签的基于边距的分类

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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 data set. 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 data sets 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. color="gray">
机译:通过优化基于边际的风险函数,可以训练许多流行的线性分类器,例如逻辑回归,提升或SVM。传统上,这些风险函数是基于标记的数据集计算的。我们开发了一种仅使用未标记的数据和边缘标签分布来估算此类风险的新颖技术。我们证明了拟议的风险估算器在高维数据集上是一致的,并在综合数据和现实数据中得到了证明。特别是,我们展示了该估计值如何用于评估迁移学习中的分类器,以及如何训练没有标签数据的分类器。 color =“ gray”>

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