Prezentare
     Distinctii / Awards
     Departamente
     Cercetare
     Parteneri
     Alumni
     Sustenabilitate
     Oferta educationala
     Studenti
     Admitere
     Examen finalizare studii
     International
     Alegeri academice


Gabriela Bodea,, Clash-ul crizelor sau viclenia lumii asimetrice (Ediția a doua), Presa Universitară Clujeană, 2023
vezi si alte aparitii editoriale

Facebook LinkedIn Twitter
Contact
Str. Teodor Mihali, Nr. 58-60 400591,
Cluj Napoca, Romania
Tel: +40 264-41.86.55
Fax: +40 264-41.25.70

   
Universitatea Babes-Bolyai | Noutati UBB
FSEGA Online | FSEGA SIS | FSEGA Alumni | Sustenabilitate
Executive Education | FSEGA Student Job Market
Contact | Harta Site | Viziteaza FSEGA

Lung, R.I. (2023) PeerJ Computer Science [Info Economics, Q2]

Autor: Cristina Alexandrina Stefanescu

Publicat: 06 Noiembrie 2023


Lung, R.I. (2023) A new clustering method based on multipartite networks. PeerJ Computer Science, 9, e1621.

DOI: https://doi.org/10.7717/peerj-cs.1621

✓ Publisher: PeerJ Inc
✓ Categories: Computer Science, Artificial Intelligence; Computer Science, Information Systems; Computer Science, Theory & Methods
✓ Article Influence Score (AIS): 0.645 (2023) / Q2 in all categories

Abstract: The clustering problem is one of the most studied and challenging in machine learning, as it attempts to identify similarities within data without any prior knowledge. Among modern clustering algorithms, the network-based ones are some of the most popular. Most of them convert the data into a graph in which instances of the data represent the nodes and a similarity measure is used to add edges. This article proposes a novel approach that uses a multipartite network in which layers correspond to attributes of the data and nodes represent intervals for the data. Clusters are intuitively constructed based on the information provided by the paths in the network. Numerical experiments performed on synthetic and real-world benchmarks are used to illustrate the performance of the approach. As a real application, the method is used to group countries based on health, nutrition, and population information from the World Bank database. The results indicate that the proposed method is comparable in performance with some of the state-of-the-art clustering methods, outperforming them for some data sets.



inapoi la stiri   vezi evenimentele   home


       Copyright © 21-11-2024 FSEGA. Protectia datelor cu caracter personal FSEGA. Protectia datelor cu caracter personal UBB.
       Web Developer  Dr. Daniel Mican   Graphic Design  Mihai-Vlad Guta