6533b7d0fe1ef96bd125ad21

RESEARCH PRODUCT

Influence Assessment in Twitter Multi-relational Network

Marinette SavonnetSergey KirgizovRim FaizLobna AzazaEric Leclercq

subject

Service (systems architecture)[ INFO ] Computer Science [cs]Computer scienceTwitter networkContext (language use)Belief theoryData science[ SPI.TRON ] Engineering Sciences [physics]/Electronics[SPI.TRON]Engineering Sciences [physics]/ElectronicsWorld Wide Web[SPI]Engineering Sciences [physics]Information fusionInfluenceOrder (business)[ SPI ] Engineering Sciences [physics][INFO]Computer Science [cs]Belief theoryInformation fusionDissemination

description

International audience; Influence in Twitter has become recently a hot research topic since this micro-blogging service is widely used to share and disseminate information. Some users are more able than others to influence and persuade peers. Thus, studying most influential users leads to reach a large-scale information diffusion area, something very useful in marketing or political campaigns. In this paper, we propose a new approach for influence assessment on Twitter network, it is based on a modified version of the conjunctive combination rule in belief functions theory in order to combine different influence markers such as retweets, mentions and replies. We experiment the proposed method on a large amount of data gathered from Twitter in the context of the European Elections 2014 and deduce top influential candidates.

https://doi.org/10.1109/sitis.2015.82