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Multiview Consensus Graph Clustering

机译:多视图共识图聚类

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摘要

A graph is usually formed to reveal the relationship between data points and graph structure is encoded by the affinity matrix. Most graph-based multiview clustering methods use predefined affinity matrices and the clustering performance highly depends on the quality of graph. We learn a consensus graph with minimizing disagreement between different views and constraining the rank of the Laplacian matrix. Since diverse views admit the same underlying cluster structure across multiple views, we use a new disagreement cost function for regularizing graphs from different views toward a common consensus. Simultaneously, we impose a rank constraint on the Laplacian matrix to learn the consensus graph with exactly k connected components where k is the number of clusters, which is different from using fixed affinity matrices in most existing graph-based methods. With the learned consensus graph, we can directly obtain the cluster labels without performing any post-processing, such as kmeans clustering algorithm in spectral clustering-based methods. A multiview consensus clustering method is proposed to learn such a graph. An efficient iterative updating algorithm is derived to optimize the proposed challenging optimization problem. Experiments on several benchmark datasets have demonstrated the effectiveness of the proposed method in terms of seven metrics.
机译:通常形成图以揭示数据点之间的关系,并且图结构由亲和矩阵编码。大多数基于图的多视图聚类方法使用预定义的亲和矩阵,并且聚类性能高度依赖于图的质量。我们通过最小化不同视图之间的分歧并限制拉普拉斯矩阵的秩来学习共识图。由于不同的视图在多个视图之间都具有相同的基础群集结构,因此我们使用新的分歧成本函数将不同视图的图形规范化为一个共同的共识。同时,我们在Laplacian矩阵上施加等级约束,以学习具有正好k个连通分量的共识图,其中k是聚类数,这与在大多数现有的基于图的方法中使用固定亲和力矩阵不同。利用学习到的共识图,我们可以直接获取聚类标签,而无需执行任何后处理,例如基于光谱聚类的方法中的kmeans聚类算法。提出了一种多视图共识聚类方法来学习这种图。推导了一种有效的迭代更新算法来优化提出的挑战性优化问题。在几个基准数据集上的实验已经证明了该方法在七个指标方面的有效性。

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