Integrating Vertex-centric Clustering with Edge-centric Clustering for Meta Path Graph Analysis

Yang Zhou, Ling Liu, David J. Buttler
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引用次数: 31

Abstract

Meta paths are good mechanisms to improve the quality of graph analysis on heterogeneous information networks. This paper presents a meta path graph clustering framework, VEPATHCLUSTER, that combines meta path vertex-centric clustering with meta path edge-centric clustering for improving the clustering quality of heterogeneous networks. First, we propose an edge-centric path graph model to capture the meta-path dependencies between pairwise path edges. We model a heterogeneous network containing M types of meta paths as M vertex-centric path graphs and M edge-centric path graphs. Second, we propose a clustering-based multigraph model to capture the fine-grained clustering-based relationships between pairwise vertices and between pairwise path edges. We perform clustering analysis on both a unified vertex-centric path graph and each edge-centric path graph to generate vertex clustering and edge clusterings of the original heterogeneous network respectively. Third, a reinforcement algorithm is provided to tightly integrate vertex-centric clustering and edge-centric clustering by mutually enhancing each other. Finally, an iterative learning strategy is presented to dynamically refine both vertex-centric clustering and edge-centric clustering by continuously learning the contributions and adjusting the weights of different path graphs.
融合顶点中心聚类和边缘中心聚类的元路径图分析
元路径是提高异构信息网络图分析质量的良好机制。为了提高异构网络的聚类质量,本文提出了一种元路径图聚类框架VEPATHCLUSTER,它将元路径顶点中心聚类和元路径边缘中心聚类相结合。首先,我们提出了一个以边为中心的路径图模型来捕获成对路径边之间的元路径依赖关系。我们将包含M种元路径的异构网络建模为M个以顶点为中心的路径图和M个以边为中心的路径图。其次,我们提出了一个基于聚类的多图模型来捕捉成对顶点之间和成对路径边缘之间的细粒度聚类关系。我们对统一的以点为中心的路径图和每个以边为中心的路径图进行聚类分析,分别生成原始异构网络的顶点聚类和边缘聚类。第三,提出了一种增强算法,通过相互增强将顶点中心聚类和边缘中心聚类紧密结合。最后,提出了一种迭代学习策略,通过不断学习不同路径图的贡献值和调整权重,来动态改进顶点中心聚类和边缘中心聚类。
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