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Robust Dimension Reduction for Clustering With Local Adaptive Learning

机译:局部自适应学习的聚类鲁棒维降

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摘要

In pattern recognition and data mining, clustering is a classical technique to group matters of interest and has been widely employed to numerous applications. Among various clustering algorithms, K-means (KM) clustering is most popular for its simplicity and efficiency. However, with the rapid development of the social network, high-dimensional data are frequently generated, which poses a considerable challenge to the traditional KM clustering as the curse of dimensionality. In such scenarios, it is difficult to directly cluster such highdimensional data that always contain redundant features and noises. Although the existing approaches try to solve this problem using joint subspace learning and KM clustering, there are still the following limitations: 1) the discriminative information in low-dimensional subspace is not well captured; 2) the intrinsic geometric information is seldom considered; and 3) the optimizing procedure of a discrete cluster indicator matrix is vulnerable to noises. In this paper, we propose a novel clustering model to cope with the above-mentioned challenges. Within the proposed model, discriminative information is adaptively explored by unifying local adaptive subspace learning and KM clustering. We extend the proposed model using a robust l(2,1)-norm loss function, where the robust cluster centroid can be calculated in a weighted iterative procedure. We also explore and discuss the relationships between the proposed algorithm and several related studies. Extensive experiments on kinds of benchmark data sets demonstrate the advantage of the proposed model compared with the state-of-the-art clustering approaches.
机译:在模式识别和数据挖掘中,聚类是一种将感兴趣的问题进行分组的经典技术,并且已被广泛应用于众多应用中。在各种聚类算法中,K均值(KM)聚类因其简单和高效而最受欢迎。然而,随着社交网络的快速发展,高维数据被频繁生成,这对传统的KM聚类作为维数的诅咒提出了巨大的挑战。在这种情况下,很难直接将始终包含冗余特征和噪声的此类高维数据聚类。尽管现有的方法试图通过联合子空间学习和KM聚类来解决这个问题,但是仍然存在以下局限性:1)低维子空间中的区分性信息不能很好地捕获; 2)很少考虑内在的几何信息; 3)离散簇指标矩阵的优化过程易受噪声影响。在本文中,我们提出了一种新颖的聚类模型来应对上述挑战。在提出的模型中,通过统一局部自适应子空间学习和KM聚类,自适应地探索区分性信息。我们使用鲁棒的l(2,1)-范数损失函数扩展提出的模型,其中可以在加权迭代过程中计算鲁棒的聚类质心。我们还将探索和讨论所提出的算法与一些相关研究之间的关系。与各种最新的聚类方法相比,对各种基准数据集进行的大量实验证明了该模型的优势。

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