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Optimism in Active Learning

机译:积极学习乐观

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摘要

Active learning is the problem of interactively constructing the training set used in classification in order to reduce its size. It would ideally successively add the instance-label pair that decreases the classification error most. However, the effect of the addition of a pair is not known in advance. It can still be estimated with the pairs already in the training set. The online minimization of the classification error involves a tradeoff between exploration and exploitation. This is a common problem in machine learning for which multiarmed bandit, using the approach of Optimism int the Face of Uncertainty, has proven very efficient these last years. This paper introduces three algorithms for the active learning problem in classification using Optimism in the Face of Uncertainty. Experiments lead on built-in problems and real world datasets demonstrate that they compare positively to state-of-the-art methods.
机译:积极学习是交互地构建分类中使用的训练集的问题,以减少其尺寸。 理想情况下,它将连续地添加实例标签对,这会降低分类错误。 然而,预先知道添加一对的效果。 它仍然可以用训练集的成对估计。 分类错误的在线最小化涉及勘探和剥削之间的权衡。 这是一种常见的问题,其中多星座的匪徒,利用乐观界面面对不确定性的方法,已经证明了这些过去几年非常有效。 本文在不确定性面前介绍了分类中的主动学习问题的三种算法。 实验导致内置问题,现实世界数据集表明它们与最先进的方法相比。

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