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ReCoM: Reinforcement Clustering of Multi-Type Interrelated Data Objects

机译:ReCoM:增强类型的相互关联的数据对象的聚类

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摘要

Most existing clustering algorithms cluster highly related data objects such as Web pages and Web users separately. The interrelation among different types of data objects is either not considered, or represented by a static feature space and treated in the same ways as other attributes of the objects. In this paper, we propose a novel clustering approach for clustering multi-type interrelated data objects, ReCoM (Reinforcement Clustering of Multi-type Interrelated data objects). Under this approach, relationships among data objects are used to improve the cluster quality of interrelated data objects through an iterative reinforcement clustering process. At the same time, the link structure derived from relationships of the interrelated data objects is used to differentiate the importance of objects and the learned importance is also used in the clustering process to further improve the clustering results. Experimental results show that the proposed approach not only effectively overcomes the problem of data sparseness caused by the high dimensional relationship space but also significantly improves the clustering accuracy.
机译:大多数现有的群集算法分别将高度相关的数据对象(如网页和Web用户)群集在一起。不考虑不同类型的数据对象之间的相互关系,或者不考虑它们之间的相互关系,或者用静态特征空间表示它们,并且以与对象的其他属性相同的方式对待它们。在本文中,我们提出了一种用于对多类型相互关联的数据对象进行聚类的新颖聚类方法,即ReCoM(对多类型相互关联的数据对象进行增强聚类)。在这种方法下,数据对象之间的关系用于通过迭代强化聚类过程来提高相互关联的数据对象的聚类质量。同时,从相互关联的数据对象之间的关系得出的链接结构被用于区分对象的重要性,并且在聚类过程中还将所获悉的重要性用于进一步改善聚类结果。实验结果表明,该方法不仅有效克服了高维关系空间引起的数据稀疏问题,而且大大提高了聚类精度。

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