Conditional Inverse Learning of Time-Varying Reproduction Numbers Inference
arXiv cs.LG / 3/19/2026
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Key Points
- The paper proposes a Conditional Inverse Reproduction Learning (CIRL) framework to infer time-varying reproduction numbers from epidemic incidence data, addressing an ill-posed inverse problem.
- CIRL learns a conditional mapping from historical incidence patterns and explicit time information to latent reproduction numbers, combining epidemiological structure with flexible likelihood-based modeling rather than strict parametric constraints.
- The method uses the renewal equation as a forward operator to enforce dynamical consistency and is robust to observation noise and zero-inflated incidence while remaining responsive to abrupt transmission changes.
- Experiments on synthetic epidemics with regime changes and real-world SARS and COVID-19 data demonstrate its effectiveness in adapting to non-stationary dynamics and regime shifts.
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