AI RESEARCH

Conditional Inverse Learning of Time-Varying Reproduction Numbers Inference

arXiv CS.LG

ArXi:2603.17549v1 Announce Type: new 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.