HM-LDM: A Hybrid-Membership Latent Distance Model

Nikolaos Nakis*, Abdulkadir Çelikkanat, Morten Mørup

*Kontaktforfatter

Publikation: Bidrag til bog/antologi/rapport/konference proceedingKonferenceartikel i proceedingForskningpeer review

4 Citationer (Scopus)

Abstract

A central aim of modeling complex networks is to accurately embed networks in order to detect structures and predict link and node properties. The Latent Space Model (LSM) has become a prominent framework for embedding networks and includes the Latent Distance Model (LDM) and Eigenmodel (LEM) as the most widely used LSM specifications. For latent community detection, the embedding space in LDMs has been endowed with a clustering model whereas LEMs have been constrained to part-based non-negative matrix factorization (NMF) inspired representations promoting community discovery. We presently reconcile LSMs with latent community detection by constraining the LDM representation to the D-simplex forming the Hybrid-Membership Latent Distance Model (HM-LDM). We show that for sufficiently large simplex volumes this can be achieved without loss of expressive power whereas by extending the model to squared Euclidean distances, we recover the LEM formulation with constraints promoting part-based representations akin to NMF. Importantly, by systematically reducing the volume of the simplex, the model becomes unique and ultimately leads to hard assignments of nodes to simplex corners. We demonstrate experimentally how the proposed HM-LDM admits accurate node representations in regimes ensuring identifiability and valid community extraction. Importantly, HM-LDM naturally reconciles soft and hard community detection with network embeddings exploring a simple continuous optimization procedure on a volume constrained simplex that admits the systematic investigation of trade-offs between hard and mixed membership community detection.

OriginalsprogEngelsk
TitelComplex Networks and Their Applications XI - Proceedings of The 11th International Conference on Complex Networks and Their Applications : COMPLEX NETWORKS 2022—Volume 1
RedaktørerHocine Cherifi, Rosario Nunzio Mantegna, Luis M. Rocha, Chantal Cherifi, Salvatore Miccichè
Antal sider14
ForlagSpringer Science+Business Media
Publikationsdato2023
Sider350-363
ISBN (Trykt)9783031211263
DOI
StatusUdgivet - 2023
Udgivet eksterntJa
Begivenhed11th International Conference on Complex Networks and their Applications, COMPLEX NETWORKS 2022 - Palermo, Italien
Varighed: 8 nov. 202210 nov. 2022

Konference

Konference11th International Conference on Complex Networks and their Applications, COMPLEX NETWORKS 2022
Land/OmrådeItalien
ByPalermo
Periode08/11/202210/11/2022
NavnStudies in Computational Intelligence
Vol/bind1077 SCI
ISSN1860-949X

Bibliografisk note

Publisher Copyright:
© 2023, The Author(s), under exclusive license to Springer Nature Switzerland AG.

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