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首页> 外文期刊>International journal of data mining and bioinformatics >A semi-supervised approach to projected clustering with applications to microarray data.
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A semi-supervised approach to projected clustering with applications to microarray data.

机译:一种半监督方法,用于将聚类与应用到微阵列数据的投影聚类。

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摘要

Recent studies have suggested that extremely low dimensional projected clusters exist in real datasets. Here, we propose a new algorithm for identifying them. It combines object clustering and dimension selection, and allows the input of domain knowledge in guiding the clustering process. Theoretical and experimental results show that even a small amount of input knowledge could already help detect clusters with only 1% of the relevant dimensions. We also show that this semi-supervised algorithm can perform knowledge-guided selective clustering when there are multiple meaningful object groupings. The algorithm is also shown effective in analysing a microarray dataset.
机译:最近的研究表明,实际数据集中存在极低维投影聚类。在这里,我们提出了一种新的算法来识别它们。它结合了对象聚类和维度选择,并允许在指导聚类过程中输入领域知识。理论和实验结果表明,即使少量的输入知识也已经可以帮助检测只有相关维数1%的聚类。我们还表明,当存在多个有意义的对象分组时,这种半监督算法可以执行知识指导的选择性聚类。该算法还显示出在分析微阵列数据集方面有效。

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