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Fast Constrained Spectral Clustering and Cluster Ensemble with Random Projection

机译:具有随机投影的快速约束谱聚类和聚类集成

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摘要

Constrained spectral clustering (CSC) method can greatly improve the clustering accuracy with the incorporation of constraint information into spectral clustering and thus has been paid academic attention widely. In this paper, we propose a fast CSC algorithm via encoding landmark-based graph construction into a new CSC model and applying random sampling to decrease the data size after spectral embedding. Compared with the original model, the new algorithm has the similar results with the increase of its model size asymptotically; compared with the most efficient CSC algorithm known, the new algorithm runs faster and has a wider range of suitable data sets. Meanwhile, a scalable semisupervised cluster ensemble algorithm is also proposed via the combination of our fast CSC algorithm and dimensionality reduction with random projection in the process of spectral ensemble clustering. We demonstrate by presenting theoretical analysis and empirical results that the new cluster ensemble algorithm has advantages in terms of efficiency and effectiveness. Furthermore, the approximate preservation of random projection in clustering accuracy proved in the stage of consensus clustering is also suitable for the weighted k-means clustering and thus gives the theoretical guarantee to this special kind of k-means clustering where each point has its corresponding weight.
机译:约束谱聚类(CSC)方法通过将约束信息纳入谱聚类中可以大大提高聚类的准确性,因此受到了广泛的学术关注。在本文中,我们提出了一种快速的CSC算法,该算法通过将基于界标的图构造编码为新的CSC模型并应用随机采样来减少频谱嵌入后的数据大小。与原始模型相比,新算法的模型尺寸渐近增大,结果相似。与已知的最有效的CSC算法相比,新算法运行速度更快,并且具有更广泛的适用数据集。同时,通过将我们的快速CSC算法与降维与随机投影相结合,提出了一种可扩展的半监督聚类集成算法。通过提供理论分析和实证结果,我们证明了新的聚类集成算法在效率和有效性方面具有优势。此外,在共识聚类阶段证明的随机投影在聚类精度上的近似保留也适用于加权k-means聚类,从而为这种特殊的k-means聚类提供了理论上的保证,其中每个点都有其对应的权重。

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