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part-01-01-intro.qmd
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part-01-01-intro.qmd
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# Introduction
```{r include=FALSE, cache=FALSE}
rm(list = ls())
pkgs <- c("igraph", "statnet", "sns", "network", "dplyr", "stringr",
"tidyr", "tidyselect", "ergm", "netdiffuseR", "lattice", "RSiena",
"netplot")
pkgs <- paste0("package:", pkgs)
for (pkg in pkgs)
tryCatch(
detach(pkg, unload = TRUE, character.only = TRUE, force = TRUE),
error = function(e) e)
```
Social Network Analysis and Network Science have a long scholarly tradition. From social diffusion models to protein-interaction networks, these complex systems disciplines cover various problems across scientific fields. Yet, although these could be seen as wildly different, the object under the microscope is the same: networks.
With a long history (and insufficient inter-discipline collaboration, if you allow me to say) of scientific advances happening somewhat isolatedly, the potential for cross-pollination between disciplines within network science is immense.
This book attempts to compile the many methods available in the realm of complexity sciences, provide an in-depth mathematical examination--when possible--and provide a few examples illustrating their usage.