从具体到抽象:关系知识的多视图聚类

IF 18.6
Ke Liang;Lingyuan Meng;Hao Li;Jun Wang;Long Lan;Miaomiao Li;Xinwang Liu;Huaimin Wang
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引用次数: 0

摘要

多视图聚类(MVC)是一个快速发展的研究方向。然而,大多数现有的MVC作品关注的是具体的对象(例如,猫,桌子),而忽略了抽象的对象(例如,知识,思想),它们也是我们日常生活的重要组成部分,与认知更相关。关系知识作为一种典型的抽象概念,描述了实体之间的关系。例如,“猫喜欢吃鱼”作为关系知识,揭示了“猫”和“鱼”之间的“吃”关系。为了填补这一空白,我们首先指出基于关系知识的MVC被认为是一个重要的场景。然后,我们构建了8个新的数据集,为它们奠定了研究基础。此外,通过补偿结构知识信息中遗漏的样本全局关联,提出了一种简单有效的关系知识MVC范式(RK-MVC)。具体而言,首先通过采用的MVC主干学习基本共识特征,并以粗粒度和细粒度的方式生成样本全局关联。特别是,样本全局相关学习模块可以很容易地扩展到各种MVC主干。最后,将基本共识特征和样本全局相关特征加权融合为目标共识特征。本文采用了9个典型的MVC主干,从7个方面进行了比较,展示了我们的RK-MVC的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Concrete to Abstract: Multi-View Clustering on Relational Knowledge
Multi-view clustering (MVC) is a fast-growing research direction. However, most existing MVC works focus on concrete objects (e.g., cats, desks) but ignore abstract objects (e.g., knowledge, thoughts), which are also important parts of our daily lives and more correlated to cognition. Relational knowledge, as a typical abstract concept, describes the relationship between entities. For example, “Cats like eating fishes,” as relational knowledge, reveals the relationship “eating” between “cats” and “fishes.” To fill this gap, we first point out that MVC on relational knowledge is considered an important scenario. Then, we construct 8 new datasets to lay research grounds for them. Moreover, a simple yet effective relational knowledge MVC paradigm (RK-MVC) is proposed by compensating the omitted sample-global correlations from the structural knowledge information. Concretely, the basic consensus features are first learned via adopted MVC backbones, and sample-global correlations are generated in both coarse-grained and fine-grained manners. In particular, the sample-global correlation learning module can be easily extended to various MVC backbones. Finally, both basic consensus features and sample-global correlation features are weighted fused as the target consensus feature. We adopt 9 typical MVC backbones in this paper for comparison from 7 aspects, demonstrating the promising capacity of our RK-MVC.
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