Modeling Epidemiological Dynamics Under Adversarial Data and User Deception

2026-02-23Computer Science and Game Theory

Computer Science and Game TheoryArtificial Intelligence
AI summary

The authors study how people might lie or hide the truth about things like mask-wearing and vaccinations when reporting to health authorities. They use a game theory model where individuals send signals about their behavior, and health officials update disease models based on these possibly dishonest reports. Their analysis shows that even when some lies happen, smart strategies on both sides can still control the spread of disease. This helps improve how public health models deal with tricky, real-world data.

epidemiological modelsself-reported datagame theorysignaling gamemaskingvaccinationnon-pharmaceutical interventionsequilibriumepidemic controlstrategic misreporting
Authors
Yiqi Su, Christo Kurisummoottil Thomas, Walid Saad, Bud Mishra, Naren Ramakrishnan
Abstract
Epidemiological models increasingly rely on self-reported behavioral data such as vaccination status, mask usage, and social distancing adherence to forecast disease transmission and assess the impact of non-pharmaceutical interventions (NPIs). While such data provide valuable real-time insights, they are often subject to strategic misreporting, driven by individual incentives to avoid penalties, access benefits, or express distrust in public health authorities. To account for such human behavior, in this paper, we introduce a game-theoretic framework that models the interaction between the population and a public health authority as a signaling game. Individuals (senders) choose how to report their behaviors, while the public health authority (receiver) updates their epidemiological model(s) based on potentially distorted signals. Focusing on deception around masking and vaccination, we characterize analytically game equilibrium outcomes and evaluate the degree to which deception can be tolerated while maintaining epidemic control through policy interventions. Our results show that separating equilibria-with minimal deception-drive infections to near zero over time. Remarkably, even under pervasive dishonesty in pooling equilibria, well-designed sender and receiver strategies can still maintain effective epidemic control. This work advances the understanding of adversarial data in epidemiology and offers tools for designing more robust public health models in the presence of strategic user behavior.