netdiffuseR: Analysis of Diffusion and Contagion Processes on Networks
This package contains functions useful for analyzing network data for diffusion of innovations applications.
The package was developed as part of the paper Thomas W. Valente, Stephanie R.
Dyal, Kar-Hai Chu, Heather Wipfli, Kayo Fujimoto, Diffusion of innovations theory applied to global tobacco control treaty ratification,
Social Science & Medicine, Volume 145, November 2015, Pages 89-97, ISSN 0277-9536
(available here)
From the description:
Empirical statistical analysis, visualization and simulation
of diffusion and contagion processes on networks. The package implements
algorithms for calculating network diffusion statistics such as transmission
rate, hazard rates, exposure models, network threshold levels, infectiousness
(contagion), and susceptibility. The package is inspired by work published in
Valente, et al., (2015); Valente (1995), Myers (2000), Iyengar and others
(2011), Burt (1987); among
others.
Acknowledgements: netdiffuseR was created with the support of grant R01 CA157577 from the National Cancer Institute/National Institutes of Health.
citation(package="netdiffuseR")
Changelog can be view here.
To get the CRAN (stable) version of the package, simple type
install.packages("netdiffuseR")
If you want the latest (unstable) version of netdiffuseR, using the devtools
package, you can install netdiffuseR
dev version as follows
devtools::install_github('USCCANA/netdiffuseR', build_vignettes = TRUE)
You can skip building vignettes by setting build_vignettes = FALSE
(so it is not required).
For the case of OSX users, there seems to be a problem when installing packages
depending on Rcpp
. This issue, developed here,
can be solved by open the terminal and typing the following
curl -O http://r.research.att.com/libs/gfortran-4.8.2-darwin13.tar.bz2
sudo tar fvxz gfortran-4.8.2-darwin13.tar.bz2 -C /
before installing the package through devtools
.
For the case of windows and mac users, they can find binary versions of the package here, netdiffuseR_1…zip, and netdiffuseR_1…tgz respectively. They can install this directly as follows (using the 1.16.3.29 version):
Install dependencies from CRAN
> install.packages(c("igraph", "Matrix", "SparseM", "RcppArmadillo", "sna"), dependencies=TRUE)
Download the binary version and install it as follows:
> install.packages("netdiffuseR_1.16.3.29.zip", repos=NULL)
For windows users, and for Mac users:
> install.packages("netdiffuseR_1.16.3.29.tgz", repos=NULL)
Since starting netdiffuseR, we have done a couple of workshops at Sunbelt and NASN. Here are the repositories:
This example has been taken from the package’s vignettes:
library(netdiffuseR)
# Generating a random graph
set.seed(1234)
n <- 100
nper <- 20
graph <- rgraph_er(n, nper, .5)
toa <- sample(c(1:(1+nper-1), NA), n, TRUE)
head(toa)
# Creating a diffnet object
diffnet <- as_diffnet(graph, toa)
diffnet
summary(diffnet)
# Visualizing distribution of suscep/infect
out <- plot_infectsuscep(diffnet, bins = 20,K=5, logscale = FALSE, h=.01)
out <- plot_infectsuscep(diffnet, bins = 20,K=5, logscale = TRUE,
exclude.zeros = TRUE, h=1)
# Generating a random graph
set.seed(123)
diffnet <- rdiffnet(500, 20,
seed.nodes = "random",
rgraph.args = list(m=3),
threshold.dist = function(x) runif(1, .3, .7))
diffnet
# Threshold with fixed vertex size
plot_threshold(diffnet)
Using more features
data("medInnovationsDiffNet")
set.seed(131)
plot_threshold(
medInnovationsDiffNet,
vertex.color = viridisLite::inferno(4)[medInnovationsDiffNet[["city"]]],
vertex.sides = medInnovationsDiffNet[["city"]] + 2,
sub = "Note: Vertices' sizes and shapes given by degree and city respectively",
jitter.factor = c(1,1), jitter.amount = c(.25,.025)
)
plot_adopters(diffnet)
hazard_rate(diffnet)
plot_diffnet(medInnovationsDiffNet, slices=c(1,9,8))
diffnet.toa(brfarmersDiffNet)[brfarmersDiffNet$toa >= 1965] <- NA
plot_diffnet2(brfarmersDiffNet, vertex.size = "indegree")
set.seed(1231)
# Random scale-free diffusion network
x <- rdiffnet(1000, 4, seed.graph="scale-free", seed.p.adopt = .025,
rewire = FALSE, seed.nodes = "central",
rgraph.arg=list(self=FALSE, m=4),
threshold.dist = function(id) runif(1,.2,.4))
# Diffusion map (no random toa)
dm0 <- diffusionMap(x, kde2d.args=list(n=150, h=1), layout=igraph::layout_with_fr)
# Random
diffnet.toa(x) <- sample(x$toa, size = nnodes(x))
# Diffusion map (random toa)
dm1 <- diffusionMap(x, layout = dm0$coords, kde2d.args=list(n=150, h=.5))
oldpar <- par(no.readonly = TRUE)
col <- viridisLite::plasma(100)
par(mfrow=c(1,2), oma=c(1,0,0,0), cex=.8)
image(dm0, col=col, main="Non-random Times of Adoption\nAdoption from the core.")
image(dm1, col=col, main="Random Times of Adoption")
par(mfrow=c(1,1))
mtext("Both networks have the same distribution on times of adoption", 1,
outer = TRUE)
par(oldpar)
out <- classify(kfamilyDiffNet, include_censored = TRUE)
ftable(out)
# Plotting
oldpar <- par(no.readonly = TRUE)
par(xpd=TRUE)
plot(out, color=viridisLite::inferno(5), las = 2, xlab="Time of Adoption",
ylab="Threshold", main="")
# Adding key
legend("bottom", legend = levels(out$thr), fill=viridisLite::inferno(5), horiz = TRUE,
cex=.6, bty="n", inset=c(0,-.1))
par(oldpar)
sessionInfo()
statnet
set (specially the packages networkDynamic
and ndtv
), igraph
Rsiena
.select_egoalter
would use this)xspline
for drawing polygons & edges.exposure
, namely, self
(so removes diagonal or not!).network
for instance?).