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Title

Community Detection Using Deep Learning: Combining Variational Graph Autoencoders with Leiden and K-Truss Techniques.

Authors

Patil, Jyotika Hariom; Potikas, Petros; Andreopoulos, William B.; Potika, Katerina

Abstract

Deep learning struggles with unsupervised tasks like community detection in networks. This work proposes the Enhanced Community Detection with Structural Information VGAE (VGAE-ECF) method, a method that enhances variational graph autoencoders (VGAEs) for community detection in large networks. It incorporates community structure information and edge weights alongside traditional network data. This combined input leads to improved latent representations for community identification via K-means clustering. We perform experiments and show that our method works better than previous approaches of community-aware VGAEs.

Subjects

K-means clustering; ALGORITHMS; DEEP learning; AUTOENCODER

Publication

Information (2078-2489), 2024, Vol 15, Issue 9, p568

ISSN

2078-2489

Publication type

Academic Journal

DOI

10.3390/info15090568

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