论文标题

学习最佳图形过滤器用于归因图的聚类

Learning Optimal Graph Filters for Clustering of Attributed Graphs

论文作者

Ortiz-Bouza, Meiby, Aviyente, Selin

论文摘要

许多现实世界系统可以表示为图表,其中节点及其相互作用通过边缘呈现。研究具有图形结构的大型数据集的重要任务是图形群集。尽管使用节点之间的连接性进行了大量工作,但许多现实世界网络也具有节点属性。聚类归因图需要图形结构和节点属性的关节建模。最近的工作重点是通过图形卷积网络和图形过滤组合这两个互补的信息来源。但是,这些方法主要仅限于低通滤波,并且不明确学习聚类任务的过滤参数。在本文中,我们介绍了一种基于图信号处理的方法,在其中我们学习了有限的脉冲响应(FIR)和自动回归移动平均值(ARMA)图的参数,该参数优化了用于聚类的滤波器。所提出的方法被称为两步的迭代优化问题,重点是学习可解释的图形过滤器,这些滤波器最适合给定数据,并最大程度地利用不同簇之间的分离。对归因网络评估了所提出的方法,并将其与最先进的方法进行了比较。

Many real-world systems can be represented as graphs where the different entities in the system are presented by nodes and their interactions by edges. An important task in studying large datasets with graphical structure is graph clustering. While there has been a lot of work on graph clustering using the connectivity between the nodes, many real-world networks also have node attributes. Clustering attributed graphs requires joint modeling of graph structure and node attributes. Recent work has focused on combining these two complementary sources of information through graph convolutional networks and graph filtering. However, these methods are mostly limited to lowpass filtering and do not explicitly learn the filter parameters for the clustering task. In this paper, we introduce a graph signal processing based approach, where we learn the parameters of Finite Impulse Response (FIR) and Autoregressive Moving Average (ARMA) graph filters optimized for clustering. The proposed approach is formulated as a two-step iterative optimization problem, focusing on learning interpretable graph filters that are optimal for the given data and that maximize the separation between different clusters. The proposed approach is evaluated on attributed networks and compared to the state-of-the-art methods.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源