R networkD3 package: node coloring in simpleNetwork()

女生的网名这么多〃 提交于 2019-11-27 13:46:35

Here's how to control colour of nodes with forceNetwork. Notice this still won't tell you the direction of the links because some nodes are source for some links and target for others - so you'll need to rethink that logic somehow. But anyway, here's controlling colour of nodes.

# Load package
library(networkD3)
library(dplyr) # to make the joins easier

# Create fake data
src <- c("A", "A", "A", "A",
         "B", "B", "C", "C", "D")
target <- c("B", "C", "D", "J",
            "E", "F", "G", "H", "I")
networkData <- data.frame(src, target, stringsAsFactors = FALSE)

nodes <- data.frame(name = unique(c(src, target)), stringsAsFactors = FALSE)
nodes$id <- 0:(nrow(nodes) - 1)


# create a data frame of the edges that uses id 0:9 instead of their names
edges <- networkData %>%
   left_join(nodes, by = c("src" = "name")) %>%
   select(-src) %>%
   rename(source = id) %>%
   left_join(nodes, by = c("target" = "name")) %>%
   select(-target) %>%
   rename(target = id)

edges$width <- 1

# make a grouping variable that will match to colours
nodes$group <- ifelse(nodes$name %in% src, "lions", "tigers")

# simple with default colours
forceNetwork(Links = edges, Nodes = nodes, 
             Source = "source",
             Target = "target",
             NodeID ="name",
             Group = "group",
             Value = "width",
             opacity = 0.9,
             zoom = TRUE)

# control colours with a JS ordinal scale
# edited 20 May 2017 with updated code from Renal Chesak's answer:
ColourScale <- 'd3.scaleOrdinal()
            .domain(["lions", "tigers"])
           .range(["#FF6900", "#694489"]);'

forceNetwork(Links = edges, Nodes = nodes, 
             Source = "source",
             Target = "target",
             NodeID ="name",
             Group = "group",
             Value = "width",
             opacity = 0.9,
             zoom = TRUE,
             colourScale = JS(ColourScale))

Peter Ellis's answer above might have worked at one time, but it seems the code has been updated in a new release. Instead of d3.scale.ordinal().range([]), you will have to use d3.scaleOrdinal().range([])

You could do a similar thing as in the linked post, but here is an example using the visNetwork package. This package interfaces with vis.js, and makes really nice interactive graphs.

library(visNetwork)
id <- unique(c(src, target))                                  # node ids
nodes <- data.frame(id, group=+(id %in% src),                 # add a grouping for src/target
  label=id, title=sprintf('<p>Node %s</p>', id))              # add some labels
g <- visNetwork(nodes=nodes, edges=networkData, width="75%")  # make graph
visExport(visHierarchicalLayout(g))                           # make it tree-like

Peter Ellis' answer does the job, but this is an alternate approach, which imho is bit more concise and easier to understand...

(Also, it should be noted that nodes can be in both the source and the target vectors at the same time, in which case, which color they should be, given your specification, is uncertain.)

library(networkD3)

src <- c("A", "A", "A", "A", "B", "B", "C", "C", "D")
target <- c("B", "C", "D", "J", "E", "F", "G", "H", "I")
networkData <- data.frame(src, target, stringsAsFactors = FALSE)

# make a nodes data frame out of all unique nodes in networkData
nodes <- data.frame(name = unique(c(networkData$src, networkData$target)))

# make a group variable where nodes in networkData$src are identified
nodes$group <- nodes$name %in% networkData$src

# make a links data frame using the indexes (0-based) of nodes in 'nodes'
links <- data.frame(source = match(networkData$src, nodes$name) - 1,
                    target = match(networkData$target, nodes$name) - 1)

forceNetwork(Links = links, Nodes = nodes, Source = "source",
             Target = "target", NodeID ="name", Group = "group",
             opacity = 1, opacityNoHover = 1)

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