An R package that implements several edge bundling/flow and metro map algorithms. So far it includes
(The API is not very opinionated yet and may change in future releases.)
The package is available on CRAN.
install.packages("edgebundle")
The developer version can be installed with
# install.packages("remotes")
::install_github("schochastics/edgebundle") remotes
Note that edgebundle
imports reticulate
and
uses a pretty big python library (datashader).
library(edgebundle)
library(igraph)
The expected input of each edge bundling function is a graph
(igraph/network or tbl_graph object) and a node layout.
All functions return a data frame of points along the edges of the
network that can be plotted with {{ggplot2}} using
geom_path()
or geom_bezier()
for
edge_bundle_stub()
.
library(igraph)
<- graph_from_edgelist(
g matrix(c(1,12,2,11,3,10,4,9,5,8,6,7),ncol=2,byrow = T),F)
<- cbind(c(rep(0,6),rep(1,6)),c(1:6,1:6))
xy
<- edge_bundle_force(g,xy,compatibility_threshold = 0.1)
fbundle head(fbundle)
#> x y index group
#> 1 0.00000000 1.00000 0.0000000 1
#> 2 0.00611816 1.19977 0.0303030 1
#> 3 0.00987237 1.29767 0.0606061 1
#> 4 0.01929293 1.52427 0.0909091 1
#> 5 0.02790686 1.68643 0.1212121 1
#> 6 0.03440142 1.81285 0.1515152 1
The result can be visualized as follows.
library(ggplot2)
ggplot(fbundle) +
geom_path(aes(x, y, group = group, col = as.factor(group)),
size = 2, show.legend = FALSE) +
geom_point(data = as.data.frame(xy), aes(V1, V2), size = 5) +
theme_void()
# simple edge-path bundling example
<- graph_from_edgelist(matrix(c(1, 2, 1, 6, 1, 4, 2, 3, 3, 4, 4, 5, 5, 6),
g ncol = 2, byrow = TRUE), FALSE)
<- cbind(c(0, 10, 25, 40, 50, 50), c(0, 15, 25, 15, 0, -10))
xy <- edge_bundle_path(g, xy, max_distortion = 2, weight_fac = 2, segments = 50)
res
ggplot() +
geom_path(data = res, aes(x, y, group = group, col = as.factor(group)),
size = 2, show.legend = FALSE) +
geom_point(data = as.data.frame(xy), aes(V1, V2), size = 5) +
scale_color_manual(values = c("grey66", "firebrick3", "firebrick3", rep("grey66", 4))) +
theme_void()
For edge_bundle_stub()
, you need
geom_bezier()
from the package {{ggforce}}.
library(ggforce)
<- graph.star(10, "undirected")
g
<- matrix(c(
xy 0, 0,
cos(90 * pi / 180), sin(90 * pi / 180),
cos(80 * pi / 180), sin(80 * pi / 180),
cos(70 * pi / 180), sin(70 * pi / 180),
cos(330 * pi / 180), sin(330 * pi / 180),
cos(320 * pi / 180), sin(320 * pi / 180),
cos(310 * pi / 180), sin(310 * pi / 180),
cos(210 * pi / 180), sin(210 * pi / 180),
cos(200 * pi / 180), sin(200 * pi / 180),
cos(190 * pi / 180), sin(190 * pi / 180)
ncol = 2, byrow = TRUE)
),
<- edge_bundle_stub(g, xy, beta = 90)
sbundle
ggplot(sbundle) +
geom_bezier(aes(x, y, group = group), size = 1.5, col = "grey66") +
geom_point(data = as.data.frame(xy), aes(V1, V2), size = 5) +
theme_void()
The typical edge bundling benchmark uses a dataset on us flights, which is included in the package.
<- us_flights
g <- cbind(V(g)$longitude, V(g)$latitude)
xy <- data.frame(x = V(g)$longitude, y = V(g)$latitude)
verts
<- edge_bundle_force(g, xy, compatibility_threshold = 0.6)
fbundle <- edge_bundle_stub(g, xy)
sbundle <- edge_bundle_hammer(g, xy, bw = 0.7, decay = 0.5)
hbundle <- edge_bundle_path(g, xy, max_distortion = 12, weight_fac = 2, segments = 50)
pbundle
<- map_data("state")
states
<- ggplot() +
p1 geom_polygon(data = states, aes(long, lat, group = group),
col = "white", size = 0.1, fill = NA) +
geom_path(data = fbundle, aes(x, y, group = group),
col = "#9d0191", size = 0.05) +
geom_path(data = fbundle, aes(x, y, group = group),
col = "white", size = 0.005) +
geom_point(data = verts, aes(x, y),
col = "#9d0191", size = 0.25) +
geom_point(data = verts, aes(x, y),
col = "white", size = 0.25, alpha = 0.5) +
geom_point(data = verts[verts$name != "", ],
aes(x, y), col = "white", size = 3, alpha = 1) +
labs(title = "Force Directed Edge Bundling") +
::theme_graph(background = "black") +
ggraphtheme(plot.title = element_text(color = "white"))
<- ggplot() +
p2 geom_polygon(data = states, aes(long, lat, group = group),
col = "white", size = 0.1, fill = NA) +
geom_path(data = hbundle, aes(x, y, group = group),
col = "#9d0191", size = 0.05) +
geom_path(data = hbundle, aes(x, y, group = group),
col = "white", size = 0.005) +
geom_point(data = verts, aes(x, y),
col = "#9d0191", size = 0.25) +
geom_point(data = verts, aes(x, y),
col = "white", size = 0.25, alpha = 0.5) +
geom_point(data = verts[verts$name != "", ], aes(x, y),
col = "white", size = 3, alpha = 1) +
labs(title = "Hammer Edge Bundling") +
::theme_graph(background = "black") +
ggraphtheme(plot.title = element_text(color = "white"))
<- function(x, b = 0.01, p = 5, n = 20) {
alpha_fct 1 - b) * (2 / (n - 1))^p * abs(x - (n - 1) / 2)^p + b
(
}
<- ggplot() +
p3 geom_polygon(data = states, aes(long, lat, group = group),
col = "white", size = 0.1, fill = NA) +
::geom_bezier(
ggforcedata = sbundle, aes(x, y,
group = group,
alpha = alpha_fct(..index.. * 20)
n = 20,
), col = "#9d0191", size = 0.1, show.legend = FALSE
+
) ::geom_bezier(
ggforcedata = sbundle, aes(x, y,
group = group,
alpha = alpha_fct(..index.. * 20)
n = 20,
), col = "white", size = 0.01, show.legend = FALSE
+
) geom_point(data = verts, aes(x, y),
col = "#9d0191", size = 0.25) +
geom_point(data = verts, aes(x, y),
col = "white", size = 0.25, alpha = 0.5) +
geom_point(data = verts[verts$name != "", ], aes(x, y),
col = "white", size = 3, alpha = 1) +
labs(title = "Stub Edge Bundling") +
::theme_graph(background = "black") +
ggraphtheme(plot.title = element_text(color = "white"))
<- ggplot() +
p4 geom_polygon(data = states, aes(long, lat, group = group),
col = "white", size = 0.1, fill = NA) +
geom_path(data = pbundle, aes(x, y, group = group),
col = "#9d0191", size = 0.05) +
geom_path(data = pbundle, aes(x, y, group = group),
col = "white", size = 0.005) +
geom_point(data = verts, aes(x, y),
col = "#9d0191", size = 0.25) +
geom_point(data = verts, aes(x, y),
col = "white", size = 0.25, alpha = 0.5) +
geom_point(data = verts[verts$name != "", ], aes(x, y),
col = "white", size = 3, alpha = 1) +
labs(title = "Edge-Path Bundling") +
::theme_graph(background = "black") +
ggraphtheme(plot.title = element_text(color = "white"))
p1
p2
p3 p4
A flow map is a type of thematic map that represent movements. It may thus be considered a hybrid of a map and a flow diagram. The package so far implements a spatial one-to-many flow layout algorithm using triangulation and approximate Steiner trees.
The function tnss_tree()
expects a one-to-many flow
network (i.e. a weighted star graph), a layout for the nodes and a set
of dummy nodes created with tnss_dummies()
.
library(ggraph)
<- cbind(state.center$x,state.center$y)[!state.name%in%c("Alaska","Hawaii"),]
xy <- tnss_dummies(xy,4)
xy_dummy <- tnss_tree(cali2010,xy,xy_dummy,4,gamma = 0.9)
gtree
ggraph(gtree,"manual",x=V(gtree)$x,y=V(gtree)$y)+
geom_polygon(data=us,aes(long,lat,group=group),fill="#FDF8C7",col="black")+
geom_edge_link(aes(width=flow,col=sqrt((xy[root,1]-..x..)^2 + (xy[root,2]-..y..)^2)),
lineend = "round",show.legend = FALSE)+
scale_edge_width(range=c(0.5,4),trans="sqrt")+
scale_edge_color_gradient(low="#cc0000",high = "#0000cc")+
geom_node_point(aes(filter=tnss=="leaf"),size=1)+
geom_node_point(aes(filter=(name=="California")),size=5,shape=22,fill="#cc0000")+
theme_graph()+
labs(title="Migration from California (2010) - Flow map")
To smooth the tree, use tnss_smooth()
. Note that this
changes the object type and you need to visualize it with {{ggplot2}}
rather than {{ggraph}}.
<- tnss_smooth(gtree,bw=5,n=20)
smooth_df
ggplot()+
geom_polygon(data=us,aes(long,lat,group=group),fill="#FDF8C7",col="black")+
geom_path(data = smooth_df,aes(x,y,group=destination,size=flow),
lineend = "round",col="firebrick3",alpha=1)+
theme_void()+
scale_size(range=c(0.5,3),guide = "none")+
labs(title="Migration from California (2010) - Flow map smoothed")
See this gallery for more examples and code.
Metro map(-like) graph drawing follow certain rules, such as octilinear edges. The algorithm implemented in the packages uses hill-climbing to optimize several features desired in a metro map. The package includes the metro map of Berlin as an example.
# the algorithm has problems with parallel edges
<- simplify(metro_berlin)
g <- cbind(V(g)$lon,V(g)$lat)*100
xy
# the algorithm is not very stable. try playing with the parameters
<- metro_multicriteria(g,xy,l = 2,gr = 0.5,w = c(100,100,1,1,100),bsize = 35)
xy_new
# geographic layout
ggraph(metro_berlin,"manual",x=xy[,1],y=xy[,2])+
geom_edge_link0(aes(col=route_I_counts),edge_width=2,show.legend = FALSE)+
geom_node_point(shape=21,col="white",fill="black",size=3,stroke=0.5)
#schematic layout
ggraph(metro_berlin,"manual",x=xy_new[,1],y=xy_new[,2])+
geom_edge_link0(aes(col=route_I_counts),edge_width=2,show.legend = FALSE)+
geom_node_point(shape=21,col="white",fill="black",size=3,stroke=0.5)+
theme_graph()+
labs(title = "Subway Network Berlin")
Edge bundling is able to produce neat looking network visualizations. However, they do not necessarily enhance readability. After experimenting with several methods, it became quite evident that the algorithms are very sensitive to the parameter settings (and often really only work in the showcase examples…). Consult the original literature (if they even provide any guidelines) or experiment yourself and do not expect any miracles.