Social Foundations of Computation

Fairness in Social Influence Maximization via Optimal Transport

2024

Conference Paper

sf


We study fairness in social influence maximization, whereby one seeks to select seeds that spread a given information throughout a network, ensuring balanced outreach among different communities (e.g. demographic groups). In the literature, fairness is often quantified in terms of the expected outreach within individual communities. In this paper, we demonstrate that such fairness metrics can be misleading since they ignore the stochastic nature of information diffusion processes. When information diffusion occurs in a probabilistic manner, multiple outreach scenarios can occur. As such, outcomes such as "in 50% of the cases, no one of group 1 receives the information and everyone in group 2 receives it and in other 50%, the opposite happens", which always results in largely unfair outcomes, are classified as fair by a variety of fairness metrics in the literature. We tackle this problem by designing a new fairness metric, mutual fairness, that captures variability in outreach through optimal transport theory. We propose a new seed selection algorithm that optimizes both outreach and mutual fairness, and we show its efficacy on several real datasets. We find that our algorithm increases fairness with only a minor decrease (and at times, even an increase) in efficiency.

Author(s): Shubham Chowdhary and Giulia De Pasquale and Nicolas Lanzetti and Ana-Andreea Stoica and Florian Dorfler
Book Title: arXiv preprint arXiv:2406.17736
Year: 2024
Month: June

Department(s): Social Foundations of Computation
Bibtex Type: Conference Paper (conference)

State: Submitted

Links: ArXiv

BibTex

@conference{chowdhary2024fairnesssocialinfluencemaximization,
  title = {Fairness in Social Influence Maximization via Optimal Transport},
  author = {Chowdhary, Shubham and Pasquale, Giulia De and Lanzetti, Nicolas and Stoica, Ana-Andreea and Dorfler, Florian},
  booktitle = {arXiv preprint arXiv:2406.17736},
  month = jun,
  year = {2024},
  doi = {},
  month_numeric = {6}
}