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@@ -4,9 +4,15 @@ Title: Fast Agent-Based Epi Models | |
Version: 0.0-3 | ||
Date: 2023-08-29 | ||
Authors@R: c( | ||
person("Derek", "Meyer", role=c("aut","cre"), email="[email protected]"), | ||
person("Derek", "Meyer", role=c("aut","cre"), | ||
email="[email protected]", comment = c(ORCID = "0009-0005-1350-6988")), | ||
person("George", "Vega Yon", role=c("aut"), | ||
email="[email protected]", comment = c(ORCID = "0000-0002-3171-0844")), | ||
person("Susan", "Holmes", role = "rev", comment = | ||
c(what = "JOSS reviewer", ORCID="0000-0002-2208-8168")), | ||
person("Abinash", "Satapathy", role = "rev", comment = | ||
c(what = "JOSS reviewer", ORCID="0000-0002-2955-2744")), | ||
person("Carinogurjao", role = "rev"), | ||
person("Centers for Disease Control and Prevention", role="fnd", comment = "Award number 1U01CK000585; 75D30121F00003" | ||
)) | ||
Description: A flexible framework for Agent-Based Models (ABM), the 'epiworldR' package provides methods for prototyping disease outbreaks and transmission models using a 'C++' backend, making it very fast. It supports multiple epidemiological models, including the Susceptible-Infected-Susceptible (SIS), Susceptible-Infected-Removed (SIR), Susceptible-Exposed-Infected-Removed (SEIR), and others, involving arbitrary mitigation policies and multiple-disease models. Users can specify infectiousness/susceptibility rates as a function of agents' features, providing great complexity for the model dynamics. Furthermore, 'epiworldR' is ideal for simulation studies featuring large populations. | ||
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