{
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  "Package": "netdiffuseR",
  "Title": "Analysis of Diffusion and Contagion Processes on Networks",
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  "Description": "Empirical statistical analysis, visualization and\nsimulation of diffusion and contagion processes on networks.\nThe package implements algorithms for calculating network\ndiffusion statistics such as transmission rate, hazard rates,\nexposure models, network threshold levels, infectiousness\n(contagion), and susceptibility. The package is inspired by\nwork published in Valente, et al., (2015)\n<DOI:10.1016/j.socscimed.2015.10.001>; Valente (1995) <ISBN:\n9781881303213>, Myers (2000) <DOI:10.1086/303110>, Iyengar and\nothers (2011) <DOI:10.1287/mksc.1100.0566>, Burt (1987)\n<DOI:10.1086/228667>; among others.",
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  "Packaged": {
    "Date": "2026-06-09 06:46:33 UTC",
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  "Author": "George Vega Yon [aut, cre] (ORCID:\n<https://orcid.org/0000-0002-3171-0844>, what: Rewrite\nfunctions with Rcpp, plus new features), Thomas Valente [aut,\ncph] (ORCID: <https://orcid.org/0000-0002-8824-5816>, what: R\noriginal code), Anibal Olivera Morales [aut, ctb] (ORCID:\n<https://orcid.org/0009-0000-3736-7939>, what: Developer from\nV1.23.0), Stephanie Dyal [ctb] (Package's first version),\nTimothy Hayes [ctb] (Package's first version)",
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  "Date/Publication": "2026-04-10 09:42:37 UTC",
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