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Active learning through density clustering

机译:通过密度聚类主动学习

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Active learning is used for classification when labeling data are costly, while the main challenge is to identify the critical instances that should be labeled. Clustering-based approaches take advantage of the structure of the data to select representative instances. In this paper, we developed the active learning through density peak clustering (ALEC) algorithm with three new features. First, a master tree was built to express the relationships among the nodes and assist the growth of the cluster tree. Second, a deterministic instance selection strategy was designed using a new importance measure. Third, tri-partitioning was employed to determine the action to be taken on each instance during iterative clustering, labeling, and classifying. Experiments were performed with 14 datasets to compare against state-of-the-art active learning algorithms. Results demonstrated that the new algorithm had higher classification accuracy using the same number of labeled data. (C) 2017 Elsevier Ltd. All rights reserved.
机译:当标记数据的成本很高时,主动学习用于分类,而主要挑战是确定应标记的关键实例。基于聚类的方法利用数据的结构来选择代表性实例。在本文中,我们开发了具有三个新功能的通过密度峰值聚类(ALEC)的主动学习算法。首先,构建主树来表达节点之间的关系并帮助集群树的增长。其次,使用新的重要性度量设计确定性实例选择策略。第三,使用三分区来确定在迭代聚类,标记和分类过程中对每个实例要采取的操作。使用14个数据集进行了实验,以与最新的主动学习算法进行比较。结果表明,使用相同数量的标记数据,新算法具有更高的分类精度。 (C)2017 Elsevier Ltd.保留所有权利。

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