Stammdaten

Titel: Influence Maximization in Dynamic Networks Using Reinforcement Learning
Untertitel:
Kurzfassung:

Influence maximization (IM) has been widely studied in recent decades, aiming to maximize the spread of influence over networks. Despite many works for static networks, fewer research studies have been dedicated to the IM problem for dynamic networks, which creates many challenges. An IM method for such an environment, should consider its dynamics and perform well under different network structures. To fulfill this objective, more computations are required. Hence, an IM approach should be efficient enough to be applicable for the ever-changing structure of a network. In this research, an IM method for dynamic networks has been proposed which uses a deep Q-learning (DQL) approach. To learn dynamic features from the network and retain previously learned information, incremental and transfer learning methods have been applied. Experiments substantiate the good performance of the DQL methods and their superiority over compared methods on larger sizes of tested synthetic and real-world networks. These experiments illustrate better performance for incremental and transfer learning methods on real-world networks.

Schlagworte: Influence maximization, Dynamic networks, Reinforcement learning, Deep Q-learning, Incremental learning, Transfer learning
Publikationstyp: Beitrag in Zeitschrift (Autorenschaft)
Erscheinungsdatum: 08.01.2024 (Online)
Erschienen in: SN Computer Science
SN Computer Science
zur Publikation
 ( Springer Nature Switzerland AG; )
Titel der Serie: -
Bandnummer: 5
Heftnummer: 1
Erstveröffentlichung: Ja
Version: -
Seite: S. 1 - 18

Versionen

Keine Version vorhanden
Erscheinungsdatum: 08.01.2024
ISBN (e-book): -
eISSN: 2661-8907
DOI: http://dx.doi.org/10.1007/s42979-023-02453-1
Homepage: https://link.springer.com/article/10.1007/s42979-023-02453-1
Open Access
  • Online verfügbar (Open Access)

Zuordnung

Organisation Adresse
Fakultät für Technische Wissenschaften
 
Institut für Informationstechnologie
Universitaetsstr. 65-67
9020 Klagenfurt am Wörthersee
Österreich
   martina.steinbacher@aau.at
http://itec.aau.at/
zur Organisation
Universitaetsstr. 65-67
AT - 9020  Klagenfurt am Wörthersee

Kategorisierung

Sachgebiete
  • 1020 - Informatik
Forschungscluster Kein Forschungscluster ausgewählt
Zitationsindex
  • Science Citation Index Expanded (SCI Expanded)
Informationen zum Zitationsindex: Master Journal List
Peer Reviewed
  • Ja
Publikationsfokus
  • Science to Science (Qualitätsindikator: II)
Klassifikationsraster der zugeordneten Organisationseinheiten:
Arbeitsgruppen
  • Verteilte Systeme

Kooperationen

Organisation Adresse
Inria Université Côte d’Azur
Frankreich
FR  

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