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Selective Supervision: Guiding Supervised Learning with Decision-Theoretic Active Learning

机译:选择性监督:通过决策理论主动学习引导监督学习

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An inescapable bottleneck with learning from large data sets is the high cost of labeling training data. Unsupervised learning methods have promised to lower the cost of tagging by leveraging notions of similarity among data points to assign tags. However, unsupervised and semi-supervised learning techniques often provide poor results due to errors in estimation. We look at methods that guide the allocation of human effort for labeling data so as to get the greatest boosts in discriminatory power with increasing amounts of work. We focus on the application of value of information to Gaussian Process classifiers and explore the effectiveness of the method on the task of classifying voice messages.
机译:从大数据集中学习的不可避免的瓶颈是标签训练数据的高成本。无监督的学习方法已经承诺通过利用数据点之间的相似概念来降低标记的成本来分配标记。然而,由于估计错误,无监督和半监督的学习技术通常会提供较差的结果。我们查看指导人类努力分配的方法,以便在越来越多的工作中获得最大的歧视力。我们专注于将信息价值应用于高斯过程分类器,并探讨该方法对语音留言的任务的有效性。

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