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A near-optimal non-myopic active learning method

机译:一种非最佳近视主动学习方法

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Non-myopic active learning allows the learner to select multiple unlabeled samples at a time. It avoids tedious retraining with each selected sample, and is effective to utilize multiple labelers. But current non-myopic active learning methods are typically greedy by selecting top N unlabeled samples with maximum score. While efficient, such a greedy active learning approach cannot guarantee the learner's performance. In this paper, we introduce a near-optimal non-myopic active learning algorithm that is efficient and simultaneously has a performance guarantee. Our experimental results on UCI data sets and a real-world application show that the proposed algorithm outperforms the myopic active learning method and the existing non-myopic active learning methods in both efficiency and accuracy.
机译:非近视主动学习允许学习者一次选择多个未标记的样本。它避免了每个选定样品的繁琐训练,并且有效利用了多个标记物。但是,当前的非近视主动学习方法通​​常会贪婪地选择最大得分最高的N个未标记样本。这种有效的贪婪主动学习方法虽然有效,却不能保证学习者的表现。在本文中,我们介绍了一种有效且同时具有性能保证的近最优非近视主动学习算法。我们在UCI数据集和实际应用中的实验结果表明,该算法在效率和准确性上均优于近视主动学习方法和现有的非近视主动学习方法。

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