同时线性多视图属性图表示学习与聚类

Chakib Fettal, Lazhar Labiod, M. Nadif
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引用次数: 2

摘要

在过去的几年中,各种多视图图聚类方法都显示出了良好的性能。然而,我们认为这些方法可能有局限性。特别是,它们通常是不必要的复杂,导致可伸缩性问题,使它们对大多数现实世界的图形应用程序望而却步。此外,它们中的许多只能处理特定类型的多视图图。另一个限制是,学习图表示的过程与聚类过程是分离的,在某些情况下,这些方法甚至不学习图表示,这严重限制了它们的灵活性和有用性。在本文中,我们提出了一个简单而有效的线性模型,它在一个统一的框架中解决了多视图属性图表示学习和聚类的双重任务。该模型首先对不同的单个视图执行一阶邻域平滑步骤,然后为每个视图赋予与其重要性相对应的权重。最后,根据每个视图的重要性进行同时聚类和表示学习的迭代过程,得到图的共识嵌入和划分。我们的模型是通用的,可以处理任何类型的多视图图。最后,我们通过大量的实验表明,这个简单的模型始终如一地实现了与最先进的多视图属性图聚类模型相比具有竞争力的性能,同时具有更短的训练时间,在某些情况下是数量级的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simultaneous Linear Multi-view Attributed Graph Representation Learning and Clustering
Over the last few years, various multi-view graph clustering methods have shown promising performances. However, we argue that these methods can have limitations. In particular, they are often unnecessarily complex, leading to scalability problems that make them prohibitive for most real-world graph applications. Furthermore, many of them can handle only specific types of multi-view graphs. Another limitation is that the process of learning graph representations is separated from the clustering process, and in some cases these methods do not even learn a graph representation, which severely restricts their flexibility and usefulness. In this paper we propose a simple yet effective linear model that addresses the dual tasks of multi-view attributed graph representation learning and clustering in a unified framework. The model starts by performing a first-order neighborhood smoothing step for the different individual views, then gives each one a weight corresponding to its importance. Finally, an iterative process of simultaneous clustering and representation learning is performed w.r.t. the importance of each view, yielding a consensus embedding and partition of the graph. Our model is generic and can deal with any type of multi-view graph. Finally, we show through extensive experimentation that this simple model consistently achieves competitive performances w.r.t. state-of-the-art multi-view attributed graph clustering models, while at the same time having training times that are shorter, in some cases by orders of magnitude.
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