Neural gas based cluster ensemble algorithm and its application to cancer data

Zhiwen Yu, J. You, Guihua Wen
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引用次数: 5

Abstract

The cluster ensemble approach is gaining more and more attention in recent years due to its useful applications in bioinformatics and pattern recognition. In this paper, we present a new cluster ensemble approach named as the neural gas based cluster ensemble algorithm (NGCEA) for class discovery from biological meaningful data, NGCEA first adopts the perturbed function to generate a set of new datasets. Then, it proposes to adopt the neural gas algorithm to obtain the clustering solutions from the perturbed datasets, In the following, NGCEA views the row of each clustering solution as the new features, and forms a new dataset. Finally, it adopts the neural gas algorithm as consensus function to perform clustering again on the new dataset and obtains the final result. The experiments in cancer datasets show that (i)NGCEA works well on most of cancer datasets (ii) NGCEA outperforms most of the state-of-the-art cluster ensemble algorithms when applied to gene expression data
基于神经气体的聚类集成算法及其在癌症数据中的应用
近年来,聚类集成方法在生物信息学和模式识别领域的应用越来越受到人们的关注。本文提出了一种新的聚类集成方法,称为基于神经气体的聚类集成算法(NGCEA),用于从生物有意义数据中发现类,NGCEA首先采用摄动函数生成一组新的数据集。然后,提出采用神经气体算法从扰动数据集中获得聚类解,下面,NGCEA将每个聚类解的行视为新的特征,形成新的数据集。最后,采用神经气体算法作为共识函数,对新数据集再次进行聚类,得到最终结果。在癌症数据集上的实验表明(i)NGCEA在大多数癌症数据集上工作良好(ii) NGCEA在应用于基因表达数据时优于大多数最先进的聚类集成算法
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