聚类分析
计算机科学
图形
理论计算机科学
杠杆(统计)
数据挖掘
聚类系数
图形属性
电压图
人工智能
折线图
作者
Barakeel Fanseu Kamhoua,Lin Zhang,Kaili Ma,James Cheng,Bo Li,Bo Han
出处
期刊:ACM Transactions on Knowledge Discovery From Data
[Association for Computing Machinery]
日期:2023-02-22
卷期号:17 (3): 1-31
被引量:4
摘要
Attributed graph clustering (AGC) is an important problem in graph mining as more and more complex data in real-world have been represented in graphs with attributed nodes. While it is a common practice to leverage both attribute and structure information for improved clustering performance, most existing AGC algorithms consider only a specific type of relations, which hinders their applicability to integrate various complex relations into node attributes for AGC. In this article, we propose GRACE, an extended graph convolution framework for AGC tasks. Our framework provides a general and interpretative solution for clustering many different types of attributed graphs, including undirected, directed, heterogeneous and hyper attributed graphs. By building suitable graph Laplacians for each of the aforementioned graph types, GRACE can seamlessly perform graph convolution on node attributes to fuse all available information for clustering. We conduct extensive experiments on 14 real-world datasets of four different graph types. The experimental results show that GRACE outperforms the state-of-the-art AGC methods on the different graph types in terms of clustering quality, time, and memory usage.
科研通智能强力驱动
Strongly Powered by AbleSci AI