Conditional Inverse Learning of Time-Varying Reproduction Numbers Inference
AI 摘要
提出CIRL框架,结合流行病学结构和数据驱动的时间表示,估计时变再生数。
主要贡献
- 提出CIRL框架,用于估计时变再生数
- 结合流行病学约束和数据驱动的时间表示
- 在合成数据和真实数据上验证了方法的有效性
方法论
CIRL框架学习历史发病率模式和时间信息到潜在再生数的条件映射,使用renewal equation作为forward operator.
原文摘要
Estimating time-varying reproduction numbers from epidemic incidence data is a central task in infectious disease surveillance, yet it poses an inherently ill-posed inverse problem. Existing approaches often rely on strong structural assumptions derived from epidemiological models, which can limit their ability to adapt to non-stationary transmission dynamics induced by interventions or behavioral changes, leading to delayed detection of regime shifts and degraded estimation accuracy. In this work, we propose a Conditional Inverse Reproduction Learning framework (CIRL) that addresses the inverse problem by learning a {conditional mapping} from historical incidence patterns and explicit time information to latent reproduction numbers. Rather than imposing strongly enforced parametric constraints, CIRL softly integrates epidemiological structure with flexible likelihood-based statistical modeling, using the renewal equation as a forward operator to enforce dynamical consistency. The resulting framework combines epidemiologically grounded constraints with data-driven temporal representations, producing reproduction number estimates that are robust to observation noise while remaining responsive to abrupt transmission changes and zero-inflated incidence observations. Experiments on synthetic epidemics with controlled regime changes and real-world SARS and COVID-19 data demonstrate the effectiveness of the proposed approach.