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Multiple Kernel k-Means With Low-Rank Neighborhood Kernel

机译:具有低秩邻域内核的多个内核K均值

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摘要

Multiple kernel clustering algorithms achieve promising performances by exploring the complementary information from kernel matrices corresponding to each data view. Most of the existing methods aim to construct a consensus kernel for the afterward clustering. However, they ignore that the desired kernel is supposed to reveal the cluster structure among samples and thus to be low rank. As a consequence, the corresponding clustering performance could decrease. To address this issue, we propose a low-rank kernel learning approach for multiple kernel clustering. Specifically, instead of regularizing the consensus kernel with low-rank constraints, we use a re-parameterize scheme for the kernel matrix. Meanwhile, the consensus kernel is located in the neighborhood area of the linear combination of base kernels. An alternate optimization strategy is designed to solve the resulting optimization problem. We evaluate the proposed method on 13 benchmark datasets with 9 state-of-the-art algorithms. As is demonstrated by experimental results, our proposed algorithm achieves superior clustering scores against the compared algorithms on the reported popular multiple kernel datasets.
机译:多个内核聚类算法通过从对应于每个数据视图的内核矩阵探索互补信息来实现有希望的性能。大多数现有方法旨在为后续聚类构建共识内核。然而,它们忽略所需的内核应该揭示样品之间的集群结构,从而达到低等级。因此,相应的聚类性能可能会降低。要解决此问题,我们为多个内核群集提出了低级核心学习方法。具体而言,不是用低秩约束正规化共识内核,而是使用重新参数化方案进行内核矩阵。同时,共识内核位于基础内核的线性组合的邻区。备用优化策略旨在解决所产生的优化问题。我们在具有9个最先进的算法的13个基准数据集中评估所提出的方法。正如实验结果所展示的那样,我们所提出的算法在报告的流行多核数据​​集上实现了卓越的聚类评分。

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