Influence Maximization with Spontaneous User Adoption
Abstract
We incorporate self activation into influence propagation and propose the self-activation independent cascade (SAIC) model: nodes may be self activated besides being selected as seeds, and influence propagates from both selected seeds and self activated nodes. Self activation reflects the real-world scenarios such as people naturally share product recommendations with their friends even without marketing intervention. It also leads to two new forms of optimization problems: (a) {\em preemptive influence maximization (PIM)}, which aims to find nodes that, if self-activated, can reach the most number of nodes before other self-activated nodes; and (b) {\em boosted preemptive influence maximization (BPIM)}, which aims to select seeds that are guaranteed to be activated and can reach the most number of nodes before other self-activated nodes. We propose scalable algorithms for PIM and BPIM and prove that they achieve approximation for PIM and approximation for BPIM, for any . Through extensive tests on real-world graphs, we demonstrate that our algorithms outperform the baseline algorithms significantly for the PIM problem in solution quality, and also outperform the baselines for BPIM when self-activation behaviors are non-uniform across nodes.
Keywords
Cite
@article{arxiv.1906.02296,
title = {Influence Maximization with Spontaneous User Adoption},
author = {Lichao Sun and Albert Chen and Philip S. Yu and Wei Chen},
journal= {arXiv preprint arXiv:1906.02296},
year = {2020}
}