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Incremental Clustering Using a Core-Based Approach

机译:使用基于核心的方法进行增量聚类

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摘要

Clustering is a division of data into groups of similar objects, with respect to a set of relevant attributes (features) of the analyzed objects. Classical partitioning clustering methods, such as k-means algorithm, start with a known set of objects, and all features are considered simultaneously when calculating objects' similarity. But there are numerous applications where an object set already clustered with respect to an initial set of attributes is altered by the addition of new features. Consequently, a re-clustering is required. We propose in this paper an incremental, k-means based clustering method, Core Based Incremental Clustering (CBIC), that is capable to re-partition the objects set, when the attribute set increases. The method starts from the partitioning into clusters that was established by applying k-means or CBIC before the attribute set changed. The result is reached more efficiently than running k-means again from the scratch on the feature-extended object set. Experiments proving the method's efficiency are also reported.
机译:聚类是相对于分析对象的一组相关属性(特征)将数据划分为相似对象的组。经典的分区聚类方法(例如k-means算法)从一组已知的对象开始,并且在计算对象的相似性时会同时考虑所有特征。但是在许多应用中,已经通过添加新功能来更改相对于初始属性集已经聚类的对象集。因此,需要重新群集。我们在本文中提出了一种增量的,基于k均值的聚类方法,即基于核心的增量聚类(CBIC),该方法能够在属性集增加时重新划分对象集。该方法开始于在属性集更改之前通过应用k均值或CBIC划分为群集。与在功能扩展的对象集上从头开始再次运行k-means相比,可以更有效地达到结果。还报告了证明该方法效率的实验。

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