基于mvs的半监督聚类

Yang Yan, Lihui Chen, C. K. Chan
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引用次数: 0

摘要

半监督聚类是一种流行的机器学习技术,用于挑战数据分类任务,当用户可以获得一些先验知识时。在本文中,我们报告了我们新提出的半监督聚类框架的实证研究,该框架利用多个视点在先验知识的帮助下进行相似性度量。针对类标签或成对约束给出的知识,分别开发了两种不同的基于mvs的方法,即LMVS和PMVS。在一些基准数据集上进行的大量实验研究证明了所提出方法的有效性。本文还比较了LMVS和PMVS,以及一些著名的半监督聚类算法。
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MVS-based semi-supervised clustering
Semi-supervised clustering is a popular machine learning technique, used for challenge data categorization tasks, when some prior knowledge is available to users. In this paper, we report the empirical studies on our newly proposed semi-supervised clustering framework, which utilizes multiple viewpoints for the similarity measure, with the help of the prior knowledge. Two different MVS-based approaches are developed for knowledge given in either class labels or pair-wise constraints, namely LMVS and PMVS respectively. Extensive experimental studies performed on a few benchmark datasets demonstrate the effectiveness of the proposed methods. Comparisons are also made between LMVS and PMVS, together with a few well-known semi-supervised clustering algorithms.
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