Hypergraphs with Edge-Dependent Vertex Weights: Spectral Clustering Based on the 1-Laplacian

Yu Zhu, Boning Li, Santiago Segarra
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引用次数: 2

Abstract

We propose a flexible framework for defining the 1-Laplacian of a hypergraph that incorporates edge-dependent vertex weights. These weights are able to reflect varying importance of vertices within a hyperedge, thus conferring the hypergraph model higher expressivity than homogeneous hypergraphs. We then utilize the eigenvector associated with the second smallest eigenvalue of the hypergraph 1-Laplacian to cluster the vertices. From a theoretical standpoint based on an adequately defined normalized Cheeger cut, this procedure is expected to achieve higher clustering accuracy than that based on the traditional Laplacian. Indeed, we confirm that this is the case using real-world datasets to demonstrate the effectiveness of the proposed spectral clustering approach. Moreover, we show that for a special case within our framework, the corresponding hypergraph 1-Laplacian is equivalent to the 1-Laplacian of a related graph, whose eigenvectors can be computed more efficiently, facilitating the adoption on larger datasets.
边缘依赖顶点权值的超图:基于1-拉普拉斯的谱聚类
我们提出了一个灵活的框架来定义包含边相关顶点权重的超图的1-拉普拉斯算子。这些权重能够反映超边缘中顶点的不同重要性,从而赋予超图模型比齐次超图更高的表达性。然后我们利用与超图1-拉普拉斯的第二个最小特征值相关联的特征向量来聚类顶点。从理论的角度来看,基于充分定义的归一化Cheeger切割,该过程有望获得比基于传统拉普拉斯的聚类精度更高的聚类精度。事实上,我们使用真实世界的数据集证实了这种情况,以证明所提出的光谱聚类方法的有效性。此外,我们证明了在我们的框架内的一个特殊情况下,相应的超图1-拉普拉斯等价于相关图的1-拉普拉斯,其特征向量可以更有效地计算,便于在更大的数据集上采用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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