COALA:一种提取高质量和高不相似度交替聚类的新方法

Eric Bae, J. Bailey
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引用次数: 140

摘要

聚类分析一直是数据挖掘和机器学习中的一项基本任务。然而,传统的聚类方法集中于产生单一的解决方案,即使可能存在多个备选聚类。因此,用户很难验证给定的解决方案是否实际上是合适的,特别是对于大型和复杂的数据集。在本文中,我们探讨了系统地找到一个新的聚类的关键要求,给定一个已知的聚类是可用的,我们还提出了一个新的算法,COALA,以发现这个新的聚类。我们的做法是由两个重要因素驱动的;差异和质量。这对于寻找新的聚类尤其重要,这种聚类对数据的底层结构提供了大量的信息,但同时又与现有的聚类有明显的不同。我们进行了实验分析,并表明我们的方法能够优于现有的技术,无论是合成数据集还是真实数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COALA: A Novel Approach for the Extraction of an Alternate Clustering of High Quality and High Dissimilarity
Cluster analysis has long been a fundamental task in data mining and machine learning. However, traditional clustering methods concentrate on producing a single solution, even though multiple alternative clusterings may exist. It is thus difficult for the user to validate whether the given solution is in fact appropriate, particularly for large and complex datasets. In this paper we explore the critical requirements for systematically finding a new clustering, given that an already known clustering is available and we also propose a novel algorithm, COALA, to discover this new clustering. Our approach is driven by two important factors; dissimilarity and quality. These are especially important for finding a new clustering which is highly informative about the underlying structure of data, but is at the same time distinctively different from the provided clustering. We undertake an experimental analysis and show that our method is able to outperform existing techniques, for both synthetic and real datasets.
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