On discovery of extremely low-dimensional clusters using semi-supervised projected clustering

Kevin Y. Yip, D. Cheung, M. Ng
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引用次数: 79

Abstract

Recent studies suggest that projected clusters with extremely low dimensionality exist in many real datasets. A number of projected clustering algorithms have been proposed in the past several years, but few can identify clusters with dimensionality lower than 10% of the total number of dimensions, which are commonly found in some real datasets such as gene expression profiles. In this paper we propose a new algorithm that can accurately identify projected clusters with relevant dimensions as few as 5% of the total number of dimensions. It makes use of a robust objective function that combines object clustering and dimension selection into a single optimization problem. The algorithm can also utilize domain knowledge in the form of labeled objects and labeled dimensions to improve its clustering accuracy. We believe this is the first semi-supervised projected clustering algorithm. Both theoretical analysis and experimental results show that by using a small amount of input knowledge, possibly covering only a portion of the underlying classes, the new algorithm can be further improved to accurately detect clusters with only 1% of the dimensions being relevant. The algorithm is also useful in getting a target set of clusters when there are multiple possible groupings of the objects.
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利用半监督投影聚类发现极低维聚类
最近的研究表明,在许多真实数据集中存在极低维数的投影聚类。在过去的几年中,已经提出了许多预测聚类算法,但是很少有算法能够识别出维数低于总维数10%的聚类,这在一些真实数据集(如基因表达谱)中很常见。在本文中,我们提出了一种新的算法,可以准确地识别出相关维数少于总维数5%的投影聚类。它利用鲁棒目标函数,将目标聚类和维数选择结合为一个优化问题。该算法还可以利用标记对象和标记维度形式的领域知识来提高聚类精度。我们认为这是第一个半监督投影聚类算法。理论分析和实验结果都表明,通过使用少量的输入知识,可能只覆盖一部分底层类,新算法可以进一步改进,以准确地检测出只有1%的维度是相关的聚类。当存在多个可能的对象分组时,该算法在获得目标簇集方面也很有用。
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