Toward World Models for Epidemiology
Zeeshan Memon, Yiqi Su, Christo Kurisummoottil Thomas, Walid Saad, Liang Zhao + 1 more
TLDR
This paper proposes using world models to improve epidemiological decision-making by accounting for latent states, noisy observations, and behavioral feedback.
Key contributions
- Introduces a conceptual framework for epidemiological world models as controlled, partially observed systems.
- Highlights latent epidemic states, noisy/policy-dependent observations, and behavioral feedback mechanisms.
- Demonstrates necessity via case studies on strategic misreporting, signal delays, and counterfactual analysis.
Why it matters
Epidemiological decision-making is complex due to hidden disease states, unreliable data, and human behavior. World models offer a powerful paradigm to address these challenges, enabling more robust planning and counterfactual analysis. This framework could lead to more effective public health interventions.
Original Abstract
World models have emerged as a unifying paradigm for learning latent dynamics, simulating counterfactual futures, and supporting planning under uncertainty. In this paper, we argue that computational epidemiology is a natural and underdeveloped setting for world models. This is because epidemic decision-making requires reasoning about latent disease burden, imperfect and policy-dependent surveillance signals, and intervention effects are mediated by adaptive human behavior. We introduce a conceptual framework for epidemiological world models, formulating epidemics as controlled, partially observed dynamical systems in which (i) the true epidemic state is latent, (ii) observations are noisy and endogenous to policy, and (iii) interventions act as sequential actions whose effects propagate through behavioral and social feedback. We present three case studies that illustrate why explicit world modeling is necessary for policy-relevant reasoning: strategic misreporting in behavioral surveillance, systematic delays in time-lagged signals such as hospitalizations and deaths, and counterfactual intervention analysis where identical histories diverge under alternative action sequences.
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