多视图概率聚类

Junjie Liu, Junlong Liu, Shaotian Yan, Rongxin Jiang, Xiang Tian, Boxuan Gu, Yao-wu Chen, Chen Shen, Jianqiang Huang
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引用次数: 3

摘要

尽管已经取得了有希望的进展,但多视图聚类(MVC)的两个挑战仍有待更好的解决方案:i)大多数现有方法要么不合格,要么需要额外的步骤来完成不完整的多视图聚类;ii)噪声或异常值可能会显著降低整体聚类性能。本文提出了一种新的不完整MVC和完整MVC的统一框架——多视图概率聚类(MPC)。MPC等效地将多视图成对后验匹配概率转换为每个视图的个体分布的组成,它允许数据丢失并可能扩展到任意数量的视图。然后利用路径传播和共邻居传播的图上下文感知细化方法对两两概率进行细化,减轻了噪声和离群值的影响。最后,MPC还等效地将概率聚类的目标转化为避免完全成对计算,并通过迭代最大化联合概率来调整聚类分配。在不完整和完整MVC的多个基准测试中进行的大量实验表明,MPC在有效性和效率方面都明显优于以前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MPC: Multi-view Probabilistic Clustering
Despite the promising progress having been made, the two challenges of multi-view clustering (MVC) are still waiting for better solutions: i) Most existing methods are either not qualified or require additional steps for incomplete multi-view clustering and ii) noise or outliers might significantly degrade the overall clustering performance. In this paper, we propose a novel unified framework for incomplete and complete MVC named multi-view probabilistic clustering (MPC). MPC equivalently transforms multi-view pairwise posterior matching probability into composition of each view's individual distribution, which tolerates data missing and might extend to any number of views. Then graph-context-aware refinement with path propagation and co-neighbor propagation is used to refine pairwise probability, which alleviates the impact of noise and outliers. Finally, MPC also equivalently transforms probabilistic clustering's objective to avoid complete pairwise computation and adjusts clustering assignments by maximizing joint probability iteratively. Extensive experiments on multiple benchmarks for incomplete and complete MVC show that MPC significantly outperforms previous state-of-the-art methods in both effectiveness and efficiency.
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