改进的基于链路的集群集成

Natthakan Iam-on, Tossapon Boongoen
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引用次数: 9

摘要

在提高准确率方面,聚类集成已被证明比任何标准聚类算法都要好。这种元学习形式可以帮助用户克服在给定一组数据的情况下选择合适的技术和该技术的参数的困境。它已被证明对许多问题领域,特别是微阵列数据分析是有效的。在不同的最先进的方法中,最近由[22],[23]引入的基于链路的方法(LCE)提供了高度准确的聚类。本文提出了一种新的基于链接的相似度度量方法来改进LCE。网络中已有的其他信息包括在相似性评估中。因此,这种细化可以提高度量的质量,从而提高集群决策的质量。在综合和UCI基准数据集上对这种改进的LCE的性能进行了评估,并与原始和几种知名的聚类集成技术进行了比较。研究结果表明,新模型可以提高LCE的准确性,并且优于实证研究中的其他模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved link-based cluster ensembles
Cluster ensembles have been shown to be better than any standard clustering algorithm at improving accuracy. This meta-learning formalism helps users to overcome the dilemma of selecting an appropriate technique and the parameters for that technique, given a set of data. It has proven effective for many problem domains, especially microarray data analysis. Among different state-of-the-art methods, the link-based approach (LCE) recently introduced by [22], [23] provides a highly accurate clustering. This paper presents the improvement of LCE with a new link-based similarity measure being developed and engaged. Additional information that is already available in a network is included in the similarity assessment. As such, this refinement can increase the quality of the measures, hence the resulting cluster decision. The performance of this improved LCE is evaluated on synthetic and UCI benchmark datasets, in comparison with the original and several well-known cluster ensemble techniques. The findings suggest that the new model can improve the accuracy of LCE and performs better than the others investigated in the empirical study.
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