A Fast Incremental Spectral Clustering for Large Data Sets

Tengteng Kong, Ye Tian, Hong Shen
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引用次数: 20

Abstract

Spectral clustering is an emerging research topic that has numerous applications, such as data dimension reduction and image segmentation. In spectral clustering, as new data points are added continuously, dynamic data sets are processed in an on-line way to avoid costly re-computation. In this paper, we propose a new representative measure to compress the original data sets and maintain a set of representative points by continuously updating Eigen-system with the incidence vector. According to these extracted points we generate instant cluster labels as new data points arrive. Our method is effective and able to process large data sets due to its low time complexity. Experimental results over various real evolutional data sets show that our method provides fast and relatively accurate results.
大数据集快速增量谱聚类
光谱聚类是一个新兴的研究课题,在数据降维、图像分割等方面有着广泛的应用。在光谱聚类中,随着新数据点的不断增加,动态数据集的处理以在线的方式进行,避免了昂贵的重新计算。在本文中,我们提出了一种新的代表性方法,通过使用关联向量不断更新特征系统来压缩原始数据集并保持一组代表性点。根据这些提取的点,当新的数据点到达时,我们生成即时的聚类标签。该方法具有较低的时间复杂度,能够有效地处理大型数据集。在各种真实进化数据集上的实验结果表明,我们的方法可以提供快速且相对准确的结果。
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