Attributed Graph Clustering: A Deep Attentional Embedding Approach
University of Technology Sydney · Monash University
Abstract
Graph clustering is a fundamental task which discovers communities or groups in networks. Recent studies have mostly focused on developing deep learning approaches to learn a compact graph embedding, upon which classic clustering methods like k-means or spectral clustering algorithms are applied. These two-step frameworks are difficult to manipulate and usually lead to suboptimal performance, mainly because the graph embedding is not goal-directed, i.e., designed for the specific clustering task. In this paper, we propose a goal-directed deep learning approach, Deep Attentional Embedded Graph Clustering (DAEGC for short). Our method focuses on attributed graphs to sufficiently explore the two sides of…
Citation impact
- FWCI
- 27.13
- Percentile
- 100%
- References
- 25
Authors
6Topics & keywords
- Cluster analysis
- Computer science
- Graph embedding
- Embedding
- Graph
- Theoretical computer science
- Topological graph theory
- Clustering coefficient