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VAIM: Visual Analytics for Influence Maximization (2008.08821v1)

Published 20 Aug 2020 in cs.SI and cs.HC

Abstract: In social networks, individuals' decisions are strongly influenced by recommendations from their friends and acquaintances. The influence maximization (IM) problem asks to select a seed set of users that maximizes the influence spread, i.e., the expected number of users influenced through a stochastic diffusion process triggered by the seeds. In this paper, we present VAIM, a visual analytics system that supports users in analyzing the information diffusion process determined by different IM algorithms. By using VAIM one can: (i) simulate the information spread for a given seed set on a large network, (ii) analyze and compare the effectiveness of different seed sets, and (iii) modify the seed sets to improve the corresponding influence spread.

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Authors (5)
  1. Alessio Arleo (13 papers)
  2. Walter Didimo (42 papers)
  3. Giuseppe Liotta (73 papers)
  4. Silvia Miksch (13 papers)
  5. Fabrizio Montecchiani (68 papers)
Citations (3)

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