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Improving Multi-objective Evolutionary Influence Maximization in Social Networks

Authors :
Bucur, Doina
Iacca, Giovanni
Marcelli, Andrea
Squillero, Giovanni
Tonda, Alberto
Sim, Kevin
Kaufmann, Paul
Johann Bernoulli Institute
University of Groningen
INCAS3
Politecnico di Torino = Polytechnic of Turin (Polito)
DAUIN Dipartimento di Automatica e Informatica
Génie et Microbiologie des Procédés Alimentaires (GMPA)
AgroParisTech-Institut National de la Recherche Agronomique (INRA)
Twente University of Technology
Integrated Signal Processing Systems
Rheinisch-Westfälische Technische Hochschule Aachen (RWTH)
DAUIN
COST Agency [CA15140]
Politecnico di Torino [Torino] (Polito)
Institut National de la Recherche Agronomique (INRA)-AgroParisTech
Source :
Applications of Evolutionary Computation21st International Conference, EvoApplications 2018, Parma, Italy, April 4-6, 2018, Proceedings, Applications of Evolutionary Computation 21st International Conference, EvoApplications 2018, Parma, Italy, April 4-6, 2018, Proceedings, pp.117-124, 2018, ⟨10.1007/978-3-319-77538-8_9⟩, Lecture Notes in Computer Science, 21st International Conference on the Applications of Evolutionary, 21st International Conference on the Applications of Evolutionary, Apr 2018, Parme, Italy. pp.8, ⟨10.1007/978-3-319-77538-8_9⟩, Applications of Evolutionary Computation ISBN: 9783319775371, EvoApplications, Applications of Evolutionary Computation: 21st International Conference, EvoApplications 2018, Proceedings, 117-124, STARTPAGE=117;ENDPAGE=124;TITLE=Applications of Evolutionary Computation
Publication Year :
2018
Publisher :
HAL CCSD, 2018.

Abstract

International audience; In the context of social networks, maximizing influence means contacting the largest possible number of nodes starting from a set of seed nodes, and assuming a model for influence propagation. The real-world applications of influence maximization are of uttermost importance, and range from social studies to marketing campaigns. Building on a previous work on multi-objective evolutionary influence maximization, we propose improvements that not only speed up the optimization process considerably, but also deliver higher-quality results. State-of-the-art heuristics are run for different sizes of the seed sets, and the results are then used to initialize the population of a multi-objective evolutionary algorithm. The proposed approach is tested on three publicly available real-world networks, where we show that the evolutionary algorithm is able to improve upon the solutions found by the heuristics, while also converging faster than an evolutionary algorithm started from scratch.

Details

Language :
English
ISBN :
978-3-319-77537-1
ISBNs :
9783319775371
Database :
OpenAIRE
Journal :
Applications of Evolutionary Computation21st International Conference, EvoApplications 2018, Parma, Italy, April 4-6, 2018, Proceedings, Applications of Evolutionary Computation 21st International Conference, EvoApplications 2018, Parma, Italy, April 4-6, 2018, Proceedings, pp.117-124, 2018, ⟨10.1007/978-3-319-77538-8_9⟩, Lecture Notes in Computer Science, 21st International Conference on the Applications of Evolutionary, 21st International Conference on the Applications of Evolutionary, Apr 2018, Parme, Italy. pp.8, ⟨10.1007/978-3-319-77538-8_9⟩, Applications of Evolutionary Computation ISBN: 9783319775371, EvoApplications, Applications of Evolutionary Computation: 21st International Conference, EvoApplications 2018, Proceedings, 117-124, STARTPAGE=117;ENDPAGE=124;TITLE=Applications of Evolutionary Computation
Accession number :
edsair.doi.dedup.....9a740ef15e5f7c5c3ece11419f701e94