Influence Maximization in Real-World Closed Social Networks
journal contribution
posted on 2024-11-02, 22:03authored byShixun Huang, Wenqing Lin, Zhifeng Bao, Jiachen Sun
In the last few years, many closed social networks such as What-sAPP and WeChat have emerged to cater for people’s growing demand of privacy and independence. In a closed social network, the posted content is not available to all users or senders can set limits on who can see the posted content. Under such a constraint, we study the problem of influence maximization in a closed social network. It aims to recommend users (not just the seed users) a limited number of existing friends who will help propagate the information, such that the seed users’ influence spread can be maximized. We first prove that this problem is NP-hard. Then, we propose a highly effective yet efficient method to augment the diffusion network, which initially consists of seed users only. The augmentation is done by iteratively and intelligently selecting and inserting a limited number of edges from the original network. Through extensive experiments on real-world social networks including deployment into a real-world application, we demonstrate the effectiveness and efficiency of our proposed method.
Funding
Next-generation Intelligent Explorations of Geo-located Data