EBMGC-GNF:通过好邻居融合实现高效平衡多视图图聚类。

Danyang Wu, Zhenkun Yang, Jitao Lu, Jin Xu, Xiangmin Xu, Feiping Nie
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引用次数: 0

摘要

利用多图的一致结构对多视图聚类至关重要。为了实现这一目标,我们提出了通过好邻居融合的高效平衡多视图图聚类(EBMGC-GNF)模型,该模型通过设计跨视图好邻居投票模块,从多个视图中全面提取可信的一致邻居信息。此外,该模型还引入了基于 p-power 函数的新型平衡正则化项来调整聚类的平衡属性,从而帮助模型适应不同分布的数据。为了解决 EBMGC-GNF 的优化问题,我们用图粗化方法将 EBMGC-GNF 转换为高效形式,并基于加速坐标下降算法对其进行优化。在实验中,大量结果表明,在大多数情况下,我们的建议在有效性和效率方面都优于最先进的方法。
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EBMGC-GNF: Efficient Balanced Multi-View Graph Clustering via Good Neighbor Fusion.

Exploiting consistent structure from multiple graphs is vital for multi-view graph clustering. To achieve this goal, we propose an Efficient Balanced Multi-view Graph Clustering via Good Neighbor Fusion (EBMGC-GNF) model which comprehensively extracts credible consistent neighbor information from multiple views by designing a Cross-view Good Neighbors Voting module. Moreover, a novel balanced regularization term based on p-power function is introduced to adjust the balance property of clusters, which helps the model adapt to data with different distributions. To solve the optimization problem of EBMGC-GNF, we transform EBMGC-GNF into an efficient form with graph coarsening method and optimize it based on accelareted coordinate descent algorithm. In experiments, extensive results demonstrate that, in the majority of scenarios, our proposals outperform state-of-the-art methods in terms of both effectiveness and efficiency.

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