数据表示聚类方法的实验比较

S. Anand, Suresh Kumar
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引用次数: 15

摘要

聚类方法广泛应用于许多领域,如IR、数据集成、文档分类、Web挖掘、查询处理以及许多其他领域和学科。目前,很多文献描述了多变量数据集的聚类算法。然而,对它们进行详尽而广泛的理论分析和实验比较的文献有限。本文研究了11种聚类算法在5个不同数据集上的基本原理和使用的技术,包括重要特征、应用领域、运行时性能、内部、外部和稳定性有效性等。本文分析了这些算法在五种不同的多元数据集上的表现。为了回答这个问题,我们使用三个有效性指标(内部、外部和稳定性)比较了11种聚类方法在5个不同数据集上的效率,并找到了最佳得分,以了解每种算法的可行解。此外,我们还包括了四种流行的现代聚类算法,仅对其理论进行了讨论。我们对传统聚类算法的实验结果表明,在不同的数据集上,不同的算法在运行时间(速度)、精度和数据集大小方面表现出不同的行为。本研究强调需要更多的自适应算法,并在其理论和实现方面在运行时间和准确性之间进行深思熟虑的平衡。
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Experimental Comparisons of Clustering Approaches for Data Representation
Clustering approaches are extensively used by many areas such as IR, Data Integration, Document Classification, Web Mining, Query Processing, and many other domains and disciplines. Nowadays, much literature describes clustering algorithms on multivariate data sets. However, there is limited literature that presented them with exhaustive and extensive theoretical analysis as well as experimental comparisons. This experimental survey paper deals with the basic principle, and techniques used, including important characteristics, application areas, run-time performance, internal, external, and stability validity of cluster quality, etc., on five different data sets of eleven clustering algorithms. This paper analyses how these algorithms behave with five different multivariate data sets in data representation. To answer this question, we compared the efficiency of eleven clustering approaches on five different data sets using three validity metrics-internal, external, and stability and found the optimal score to know the feasible solution of each algorithm. In addition, we have also included four popular and modern clustering algorithms with only their theoretical discussion. Our experimental results for only traditional clustering algorithms showed that different algorithms performed different behavior on different data sets in terms of running time (speed), accuracy and, the size of data set. This study emphasized the need for more adaptive algorithms and a deliberate balance between the running time and accuracy with their theoretical as well as implementation aspects.
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