GDILM.SEIRS - Spatial Modeling of Infectious Disease with Reinfection
Geographically Dependent Individual Level Models (GDILMs)
within the Susceptible-Exposed-Infectious-Recovered-Susceptible
(SEIRS) framework are applied to model infectious disease
transmission, incorporating reinfection dynamics. This package
employs a likelihood based Monte Carlo Expectation Conditional
Maximization (MCECM) algorithm for estimating model parameters.
It also provides tools for GDILM fitting, parameter estimation,
AIC calculation on real pandemic data, and simulation studies
customized to user-defined model settings.