Fast, Frequentist Estimation of Epidemic Reproduction Numbers
Abstract
The effective reproduction number Rt is one of the most important indicators of epidemic dynamics. Estimating Rt, typically from case reports or hospitalization counts, poses a challenging inverse problem. One key issue is lag: Rt acts at the moment of transmission, while the data it generates surface days later. To handle this delay and infer recent infections in real time, popular methods take a Bayesian approach, which can be slow and sensitive to prior specification. As an alternative, we propose ConvRt, a frequentist method for retrospective and real-time estimation. ConvRt deconvolves latent infections and then estimates Rt with successive penalized-likelihood steps, using a spline basis to model smooth curves. Across both stylized and data-driven simulations, we demonstrate favorable performance in point estimation, uncertainty quantification, and runtime. Moreover, by untangling smoothness from future projections, ConvRt enables researchers to assess which qualitative narratives about Rt the data support.
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