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Pool-based active learning based on incremental decision tree

机译:基于增量决策树的基于池的主动学习

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The pool-based active learning intends to collect the samples into the pool firstly, and selects the best informative sample from it which has no label to add into the training sets for updating the classifier secondly. This paper proposed a new method based on the incremental decision tree algorithm to measure the ambiguity of the unlabeled samples for the sample selection in the active learning.
机译:基于池的主动学习旨在首先将样本收集到池中,然后从池中选择没有标签的最佳信息样本,然后将其添加到训练集中以更新分类器。本文提出了一种基于增量决策树算法的新方法,用于测量未标记样本的歧义度,以进行主动学习中的样本选择。

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