首页> 外文会议>PAKDD 2006 Workshop on Data Mining for Biomedical Applications(BioDM 2006); 20060409; Singapore(SG) >Heterogeneous Clustering Ensemble Method for Combining Different Cluster Results
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Heterogeneous Clustering Ensemble Method for Combining Different Cluster Results

机译:融合不同聚类结果的异构聚类集成方法

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摘要

Biological data set sizes have been growing rapidly with the technological advances that have occurred in bioinformatics. Data mining techniques have been used extensively as approaches to detect interesting patterns in large databases. In bioinformatics, clustering algorithm technique for data mining can be applied to find underlying genetic and biological interactions, without considering prior information from datasets. However, many clustering algorithms are practically available, and different clustering algorithms may generate dissimilar clustering results due to bio-data characteristics and experimental assumptions. In this paper, we propose a novel heterogeneous clustering ensemble scheme that uses a genetic algorithm to generate high quality and robust clustering results with characteristics of bio-data. The proposed method combines results of various clustering algorithms and crossover operation of genetic algorithm, and is founded on the concept of using the evolutionary processes to select the most commonly-inherited characteristics. Our framework proved to be available on real data set and the optimal clustering results generated by means of our proposed method are detailed in this paper. Experimental results demonstrate that the proposed method yields better clustering results than applying a single best clustering algorithm.
机译:随着生物信息学技术的进步,生物数据集的大小正在迅速增长。数据挖掘技术已被广泛用作检测大型数据库中有趣模式的方法。在生物信息学中,可以将用于数据挖掘的聚类算法技术应用于查找潜在的遗传和生物相互作用,而无需考虑数据集中的先验信息。但是,实际上有许多聚类算法可用,并且由于生物数据特征和实验假设,不同的聚类算法可能会产生不同的聚类结果。在本文中,我们提出了一种新颖的异构聚类集成方案,该方案使用遗传算法来生成具有生物数据特征的高质量且鲁棒的聚类结果。所提出的方法结合了各种聚类算法的结果和遗传算法的交叉运算,并基于使用进化过程选择最常被继承的特征的概念。我们的框架被证明可用于真实数据集,并且本文详细介绍了通过我们提出的方法生成的最佳聚类结果。实验结果表明,与应用单个最佳聚类算法相比,该方法产生的聚类结果更好。

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