利用引力系综聚类的文献聚类

A. Sadeghian, H. Nezamabadi-pour
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引用次数: 7

摘要

文本挖掘是一个被认为是数据挖掘的扩展领域。在文本挖掘的上下文中,文档聚类用于同样地将集合中的文档划分为相同的类别(称为聚类),并将不同的文档划分为不同的组。由于每个数据集都有自己的特点,找到一个合适的聚类算法,可以管理各种类型的聚类,是一个很大的挑战。聚类算法有其独特的方法来计算聚类的数量,对数据施加结构,并证明即将出现的聚类。将不同的聚类结合起来的想法是为了克服单个算法的缺陷,并进一步提高它们的执行能力。另一方面,受引力定律的启发,引入了不同的聚类算法,每个算法都试图聚类复杂的数据集。引力系综聚类(GEC)是一种将引力聚类和系综聚类的概念结合在一起以达到更好聚类效果的聚类方法。本文介绍了GEC在文档聚类问题中的一个应用。该方法对原有的GEC算法进行了改进。这个修改尝试使用新的参数设置来产生更多样化的聚类集成。GEC算法使用文档数据集进行评估。通过与竞争算法的比较,得到了令人满意的结果。
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Document clustering using gravitational ensemble clustering
Text Mining is a field that is considered as an extension of data mining. In the context of text mining, document clustering is used to set apart likewise documents of a collection into the identical category, called cluster, and divergent documents to distinctive groups. Since every dataset has its own characteristics, finding an appropriate clustering algorithm that can manage all kinds of clusters, is a big challenge. Clustering algorithms has theirs unique approaches for computing the number of clusters, imposing a structure on the data, and attesting the out coming clusters. The idea of combining different clustering is an effort to overwhelm the faults of single algorithms and further enhance their executions. On the other hand, inspired by the gravitational law, different clustering algorithms have been introduced that each one attempted to cluster complex datasets. Gravitational Ensemble Clustering (GEC) is an ensemble method that employs both the concepts of gravitational clustering and ensemble clustering to reach a better clustering result. This paper represents an application of GEC to the problem of document clustering. The proposed method uses a modification of the original GEC algorithm. This modification tries to produce a more varied clustering ensemble using new parameter setting. The GEC algorithm is assessed using document datasets. Promising results of the presented method were obtained in comparison with competing algorithms.
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