English

Scalable Fair Influence Maximization

Data Structures and Algorithms 2023-11-23 v2

Abstract

Given a graph GG, a community structure C\mathcal{C}, and a budget kk, the fair influence maximization problem aims to select a seed set SS (Sk|S|\leq k) that maximizes the influence spread while narrowing the influence gap between different communities. While various fairness notions exist, the welfare fairness notion, which balances fairness level and influence spread, has shown promising effectiveness. However, the lack of efficient algorithms for optimizing the welfare fairness objective function restricts its application to small-scale networks with only a few hundred nodes. In this paper, we adopt the objective function of welfare fairness to maximize the exponentially weighted summation over the influenced fraction of all communities. We first introduce an unbiased estimator for the fractional power of the arithmetic mean. Then, by adapting the reverse influence sampling (RIS) approach, we convert the optimization problem to a weighted maximum coverage problem. We also analyze the number of reverse reachable sets needed to approximate the fair influence at a high probability. Further, we present an efficient algorithm that guarantees 11/eε1-1/e - \varepsilon approximation.

Keywords

Cite

@article{arxiv.2306.06820,
  title  = {Scalable Fair Influence Maximization},
  author = {Xiaobin Rui and Zhixiao Wang and Jiayu Zhao and Lichao Sun and Wei Chen},
  journal= {arXiv preprint arXiv:2306.06820},
  year   = {2023}
}
R2 v1 2026-06-28T11:02:30.074Z