| Authors | علیرضا رضوانیان,مهدی وحیدی پور,محمد رضا میبدی |
| Journal | Scientific Reports (nature publication group) |
| IF | ثبت نشده |
| Paper Type | Full Paper |
| Published At | 2023-04-14 |
| Journal Grade | Scientific - research |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | SCOPUS ,JCR |
Abstract
Most current studies on information diffusion in online social networks focus on the deterministic
aspects of social networks. However, the behavioral parameters of online social networks are
uncertain, unpredictable, and time-varying. Thus, deterministic graphs for modeling information
diffusion in online social networks are too restrictive to solve most real network problems, such as
influence maximization. Recently, stochastic graphs have been proposed as a graph model for social
network applications where the weights associated with links in the stochastic graph are random
variables. In this paper, we first propose a diffusion model based on a stochastic graph, in which
influence probabilities associated with its links are unknown random variables. Then we develop an
approach using the set of learning automata residing in the proposed diffusion model to estimate
the influence probabilities by sampling from the links of the stochastic graph. Numerical simulations
conducted on real and artificial stochastic networks demonstrate the effectiveness of the proposed
stochastic diffusion model for influence maximization.