基于多聚类层次的主动半监督分类

Antonio J. L. Batista, R. Campello, J. Sander
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引用次数: 5

摘要

主动半监督学习在标记数据难以获得而未标记数据容易获得的分类场景中发挥重要作用。本文研究了一种可由多聚类层次驱动的主动半监督算法。如果有一个或多个层次结构可以合理地将集群与类标签对齐,那么需要一些查询来标记高质量的所有未标记数据。我们以著名的分层采样(HS)算法为出发点,并在原始算法的不同方面进行更改,以解决其主要缺点,包括对单个特定层次选择的敏感性。在许多真实数据集上的实验结果表明,与许多最先进的主动半监督分类算法相比,所提出的算法表现优异或具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active Semi-Supervised Classification Based on Multiple Clustering Hierarchies
Active semi-supervised learning can play an important role in classification scenarios in which labeled data are difficult to obtain, while unlabeled data can be easily acquired. This paper focuses on an active semi-supervised algorithm that can be driven by multiple clustering hierarchies. If there is one or more hierarchies that can reasonably align clusters with class labels, then a few queries are needed to label with high quality all the unlabeled data. We take as a starting point the well-known Hierarchical Sampling (HS) algorithm and perform changes in different aspects of the original algorithm in order to tackle its main drawbacks, including its sensitivity to the choice of a single particular hierarchy. Experimental results over many real datasets show that the proposed algorithm performs superior or competitive when compared to a number of state-of-the-art algorithms for active semi-supervised classification.
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