On the Cost of Demographic Parity in Influence Maximization
Ruben Becker, Gianlorenzo D'Angelo, Sajjad Ghobadi

TL;DR
This paper investigates the impact of enforcing demographic parity fairness constraints on influence maximization in networks, revealing that fairness can significantly reduce spread but can be achieved efficiently with tailored algorithms.
Contribution
It introduces three optimization problems for influence maximization with strict demographic parity constraints and provides algorithms with approximation guarantees and heuristics for practical fairness enforcement.
Findings
Cost of fairness can be high in spread and complexity.
Algorithms with approximation guarantees can enforce fairness.
Empirical results show practical effectiveness and small fairness cost.
Abstract
Modeling and shaping how information spreads through a network is a major research topic in network analysis. While initially the focus has been mostly on efficiency, recently fairness criteria have been taken into account in this setting. Most work has focused on the maximin criteria however, and thus still different groups can receive very different shares of information. In this work we propose to consider fairness as a notion to be guaranteed by an algorithm rather than as a criterion to be maximized. To this end, we propose three optimization problems that aim at maximizing the overall spread while enforcing strict levels of demographic parity fairness via constraints (either ex-post or ex-ante). The level of fairness hence becomes a user choice rather than a property to be observed upon output. We study this setting from various perspectives. First, we prove that the cost of…
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Taxonomy
TopicsComplex Network Analysis Techniques · Opportunistic and Delay-Tolerant Networks · Opinion Dynamics and Social Influence
