Nonparametric Inference Framework for Time-dependent Epidemic Models
Compartmental models, especially the Susceptible-Infected-Removed (SIR) model, have long been used to understand the behaviour of various diseases. Allowing parameters, such as the transmission rate, to be time-dependent functions makes it possible to adjust for and make inferences about changes in...
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Zusammenfassung: | Compartmental models, especially the Susceptible-Infected-Removed (SIR)
model, have long been used to understand the behaviour of various diseases.
Allowing parameters, such as the transmission rate, to be time-dependent
functions makes it possible to adjust for and make inferences about changes in
the process due to mitigation strategies or evolutionary changes of the
infectious agent. In this article, we attempt to build a nonparametric
inference framework for stochastic SIR models with time dependent infection
rate. The framework includes three main steps: likelihood approximation,
parameter estimation and confidence interval construction. The likelihood
function of the stochastic SIR model, which is often intractable, can be
approximated using methods such as diffusion approximation or tau leaping. The
infection rate is modelled by a B-spline basis whose knot location and number
of knots are determined by a fast knot placement method followed by a
criterion-based model selection procedure. Finally, a point-wise confidence
interval is built using a parametric bootstrap procedure. The performance of
the framework is observed through various settings for different epidemic
patterns. The model is then applied to the Ontario COVID-19 data across
multiple waves. |
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DOI: | 10.48550/arxiv.2409.17968 |