高维聚类:一种强连通组件聚类解决方案

Mihir Shekhar, Lini T. Thomas, K. Karlapalem
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引用次数: 1

摘要

高维数据的聚类通常具有挑战性,因为维度的诅咒导致了识别聚类的挑战。高维集群的关键挑战是开发一种解决方案,该解决方案能够识别尽可能完整的集群,同时不合并分离良好的集群。我们提出了代表局部紧凑区域的核心点。核心点的k近邻图的强连接分量提供了一组强相互连接的点。这些相互连接的区域代表了集群的核心结构。我们的经验分析和实验结果展示了我们的解决方案背后的基本原理,并验证了针对最先进的高维聚类算法的聚类的优点。我们的解决方案的新颖之处在于使用反向最近邻的概念来生成高维的自然聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Dimensional Clustering: A Strongly Connected Component Clustering Solution (SCCC)
High dimensional data is often challenging to cluster due to the curse of dimensionality leading to challenges in identifying clusters. The key challenge in high dimensional clustering is to develop a solution that identifies clusters which are as complete as they can be, while not merging well-separated clusters. We propose core points which represent local compact regions. The strongly connected component from the k-nearest neighbor graph of core points provides for a group of points that are strongly mutually connected. These mutually connected regions represent the core structure of the clusters. Our empirical analysis and experimental results present the rationale behind our solution and validate the goodness of the clusters against the state of the art high dimensional clustering algorithms. The novelty of our solution is to use the concept of reverse nearest neighbors to generate natural clusters in high dimensions.
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