Abstract
Modelling interactions on complex networks needs efficient algorithms for describing processes on a detailed level in the network structure. This kind of modelling enables more realistic applications of spreading processes, network metrics, and analyses of communities. However, different real-world processes may impose requirements for implementations and their efficiency. We discuss different transmission and spreading processes and their interrelations. Two pseudo-algorithms are presented, one for the complex contagion spreading mechanism using non-self-avoiding paths in the modelling, and one for simple contagion processes using self-avoiding paths in the modelling. The first algorithm is an efficient implementation that can be used for describing social interaction in a social network structure. The second algorithm is a less efficient implementation for describing specific forms of information transmission and epidemic spreading.
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CITATION STYLE
Kuikka, V., Aalto, H., Ijäs, M., & Kaski, K. K. (2022). Efficiency of Algorithms for Computing Influence and Information Spreading on Social Networks. Algorithms, 15(8). https://doi.org/10.3390/a15080262
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