Unsupervised Community Detection with Modularity-Based Attention Model

05/20/2019
by   Ivan Lobov, et al.
0

In this paper we take a problem of unsupervised nodes clustering on graphs and show how recent advances in attention models can be applied successfully in a "hard" regime of the problem. We propose an unsupervised algorithm that encodes Bethe Hessian embeddings by optimizing soft modularity loss and argue that our model is competitive to both classical and Graph Neural Network (GNN) models while it can be trained on a single graph.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/03/2021

Recurrent Graph Neural Network Algorithm for Unsupervised Network Community Detection

Network community detection often relies on optimizing partition quality...
research
11/28/2020

Self-Expressive Graph Neural Network for Unsupervised Community Detection

Graph neural networks are able to achieve promising performance on multi...
research
09/26/2019

Overlapping Community Detection with Graph Neural Networks

Community detection is a fundamental problem in machine learning. While ...
research
09/05/2021

Detecting Communities from Heterogeneous Graphs: A Context Path-based Graph Neural Network Model

Community detection, aiming to group the graph nodes into clusters with ...
research
07/08/2020

Graph Neural Networks-based Clustering for Social Internet of Things

In this paper, we propose a machine learning process for clustering larg...
research
05/10/2023

Search for the UGLE Truth: An Investigation into Unsupervised GNN Learning Environments

Graph Neural Networks (GNNs) are a pertinent tool for any machine learni...
research
03/23/2018

Unsupervised Keyphrase Extraction with Multipartite Graphs

We propose an unsupervised keyphrase extraction model that encodes topic...

Please sign up or login with your details

Forgot password? Click here to reset