GillespieSSA: Gillespie's Stochastic Simulation Algorithm (SSA)
Provides a simple to use, intuitive, and extensible interface to several stochastic simulation algorithms for generating simulated trajectories of finite population continuous-time model. Currently it implements Gillespie's exact stochastic simulation algorithm (Direct method) and several approximate methods (Explicit tau-leap, Binomial tau-leap, and Optimized tau-leap). The package also contains a library of template models that can be run as demo models and can easily be customized and extended. Currently the following models are included, 'Decaying-Dimerization' reaction set, linear chain system, logistic growth model, 'Lotka' predator-prey model, Rosenzweig-MacArthur predator-prey model, 'Kermack-McKendrick' SIR model, and a 'metapopulation' SIRS model. Pineda-Krch et al. (2008) <doi:10.18637/jss.v025.i12>.
Documentation:
| Reference manual: | GillespieSSA.html ,GillespieSSA.pdf |
| Vignettes: | Decaying-Dimerization Reaction Set (Gillespie, 2001) (source,R code) SIRS metapopulation model (Pineda-Krch, 2008) (source,R code) Linear Chain System (Cao et al., 2004) (source,R code) Pearl-Verhulst Logistic growth model (Kot, 2001) (source,R code) Lotka predator-prey model (Gillespie, 1977; Kot, 2001) (source,R code) Radioactive decay model (Gillespie, 1977) (source,R code) Rosenzweig-MacArthur predator-prey model (Pineda-Krch et al., 2007) (source,R code) Kermack-McKendrick SIR model (Brown & Rothery, 1993) (source,R code)
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