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R
Tags: R software, packages, apps, applications
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EIDM
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Software
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Software languages☜☜76A4CF
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R
R☜☜76A4CF
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diseasemapping
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epi base package for SyncroSim
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epigrowthfit
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EpiILM
EpiILM☜The R package EpiILM provides tools for simulating from discrete-time individual level models for infectious disease data analysis. This epidemic model class contains spatial and contact-network based models with two disease types: Susceptible-Infectious (SI) and Susceptible-Infectious-Removed (SIR).☜FFFACD
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EpiILMCT
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geostatsp
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macpan2
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