The problem of influence maximization is selecting the most influential individuals in a social network. With the popularity of social network sites and the development of viral marketing, the importance of the problem has increased. The influence maximization problem is NP-hard, and therefore, there will not exist any polynomial-time algorithm to solve the problem unless P = NP. Many heuristics are proposed for finding a nearly good solution in a shorter time. This study proposes two heuristic algorithms for finding good solutions. The heuristics are based on two ideas: 1) vertices of high degree have more influence in the network, and 2) nearby vertices influence on almost analogous sets of vertices. We evaluate our algorithms on several well-known data sets and show that our heuristics achieve better results (up to 15% in the influence spread) for this problem in a shorter time (up to 85% improvement in the running time).
Adineh, M., & Nouri Baygi, M. (2022). Proximity-Aware Degree-Based Heuristics for the Influence Maximization Problem. Computer and Knowledge Engineering, 5(1), 37-46. doi: 10.22067/cke.2022.63265.0
MLA
Maryam Adineh; Mostafa Nouri Baygi. "Proximity-Aware Degree-Based Heuristics for the Influence Maximization Problem", Computer and Knowledge Engineering, 5, 1, 2022, 37-46. doi: 10.22067/cke.2022.63265.0
HARVARD
Adineh, M., Nouri Baygi, M. (2022). 'Proximity-Aware Degree-Based Heuristics for the Influence Maximization Problem', Computer and Knowledge Engineering, 5(1), pp. 37-46. doi: 10.22067/cke.2022.63265.0
VANCOUVER
Adineh, M., Nouri Baygi, M. Proximity-Aware Degree-Based Heuristics for the Influence Maximization Problem. Computer and Knowledge Engineering, 2022; 5(1): 37-46. doi: 10.22067/cke.2022.63265.0
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