I would like to make a radar plot using R and found the function below on the web. Link to site Looks pretty good , however I would like to pass a dataframe with values from 0 to 1 and scale the chart with percentages instead. I need help to make it happen though...

Here is the data and the function that I found on the page.

CreateRadialPlot <- function(plot.data,
                             grid.min=-0.5,  #10,
                             grid.mid=0,  #50,
                             grid.max=0.5,  #100,
                             centre.y=grid.min - ((1/9)*(grid.max-grid.min)),
                             plot.legend=if (nrow(plot.data)>1) TRUE else FALSE,
                             legend.text.size=grid.label.size ) {

  var.names <- colnames(plot.data)[-1]  #'Short version of variable names 
  #axis.labels [if supplied] is designed to hold 'long version' of variable names
  #with line-breaks indicated using \n

  #caclulate total plot extent as radius of outer circle x a user-specifiable scaling factor

  #Check supplied data makes sense
  if (length(axis.labels) != ncol(plot.data)-1) 
    return("Error: 'axis.labels' contains the wrong number of axis labels") 
    return("Error: plot.data' contains value(s) < centre.y")
    return("Error: 'plot.data' contains value(s) > grid.max")

  #Declare required internal functions

  CalculateGroupPath <- function(df) {
    #Converts variable values into a set of radial x-y coordinates
    #Code adapted from a solution posted by Tony M to

    #  df: Col 1 -  group ('unique' cluster / group ID of entity)
    #      Col 2-n:  v1.value to vn.value - values (e.g. group/cluser mean or median) of variables v1 to v.n

    path <- as.factor(as.character(df[,1]))

    ##find increment
    angles = seq(from=0, to=2*pi, by=(2*pi)/(ncol(df)-1))

    ##create graph data frame
    graphData= data.frame(seg="", x=0,y=0)

    for(i in levels(path)){

      pathData = subset(df, df[,1]==i)

      for(j in c(2:ncol(df))){

        #pathData[,j]= pathData[,j]

        graphData=rbind(graphData, data.frame(group=i, 
      ##complete the path by repeating first pair of coords in the path
      graphData=rbind(graphData, data.frame(group=i, 


    #Make sure that name of first column matches that of input data (in case !="group")
    colnames(graphData)[1] <- colnames(df)[1]

    graphData #data frame returned by function


  CaclulateAxisPath = function(var.names,min,max) {
    #Caculates x-y coordinates for a set of radial axes (one per variable being plotted in radar plot)

    #var.names - list of variables to be plotted on radar plot
    #min - MININUM value required for the plotted axes (same value will be applied to all axes)
    #max - MAXIMUM value required for the plotted axes (same value will be applied to all axes)

    #var.names <- c("v1","v2","v3","v4","v5")
    n.vars <- length(var.names) # number of vars (axes) required

    #Cacluate required number of angles (in radians)
    angles <- seq(from=0, to=2*pi, by=(2*pi)/n.vars)

    #calculate vectors of min and max x+y coords
    min.x <- min*sin(angles)
    min.y <- min*cos(angles)
    max.x <- max*sin(angles)
    max.y <- max*cos(angles)

    #Combine into a set of uniquely numbered paths (one per variable)
    axisData <- NULL
    for (i in 1:n.vars) {
      a <- c(i,min.x[i],min.y[i])
      b <- c(i,max.x[i],max.y[i])
      axisData <- rbind(axisData,a,b)

    #Add column names + set row names = row no. to allow conversion into a data frame
    colnames(axisData) <- c("axis.no","x","y")
    rownames(axisData) <- seq(1:nrow(axisData))

    #Return calculated axis paths

  funcCircleCoords <- function(center = c(0,0), r = 1, npoints = 100){
    #Adapted from Joran's response to http://stackoverflow.com/questions/6862742/draw-a-circle-with-ggplot2
    tt <- seq(0,2*pi,length.out = npoints)
    xx <- center[1] + r * cos(tt)
    yy <- center[2] + r * sin(tt)
    return(data.frame(x = xx, y = yy))

  ### Convert supplied data into plottable format

  # (a) add abs(centre.y) to supplied plot data 
  #[creates plot centroid of 0,0 for internal use, regardless of min. value of y
  # in user-supplied data]
  plot.data.offset <- plot.data
  plot.data.offset[,2:ncol(plot.data)]<- plot.data[,2:ncol(plot.data)]+abs(centre.y)

  # (b) convert into radial coords
  group <-NULL
  group$path <- CalculateGroupPath(plot.data.offset)

  # (c) Calculate coordinates required to plot radial variable axes
  axis <- NULL
  axis$path <- CaclulateAxisPath(var.names,grid.min+abs(centre.y),grid.max+abs(centre.y))

  # (d) Create file containing axis labels + associated plotting coordinates

  axis$label <- data.frame(
    y=NA )

  #axis label coordinates
  n.vars <- length(var.names)
  angles = seq(from=0, to=2*pi, by=(2*pi)/n.vars)
  axis$label$x <- sapply(1:n.vars, function(i, x) {((grid.max+abs(centre.y))*axis.label.offset)*sin(angles[i])})
  axis$label$y <- sapply(1:n.vars, function(i, x) {((grid.max+abs(centre.y))*axis.label.offset)*cos(angles[i])})

  # (e) Create Circular grid-lines + labels

  #caclulate the cooridinates required to plot circular grid-lines for three user-specified
  #y-axis values: min, mid and max [grid.min; grid.mid; grid.max]
  gridline <- NULL
  gridline$min$path <- funcCircleCoords(c(0,0),grid.min+abs(centre.y),npoints = 360)
  gridline$mid$path <- funcCircleCoords(c(0,0),grid.mid+abs(centre.y),npoints = 360)
  gridline$max$path <- funcCircleCoords(c(0,0),grid.max+abs(centre.y),npoints = 360)

  #gridline labels
  gridline$min$label <- data.frame(x=gridline.label.offset,y=grid.min+abs(centre.y),
  gridline$max$label <- data.frame(x=gridline.label.offset,y=grid.max+abs(centre.y),
  gridline$mid$label <- data.frame(x=gridline.label.offset,y=grid.mid+abs(centre.y),

  ### Start building up the radar plot

  # Delcare 'theme_clear', with or without a plot legend as required by user
  #[default = no legend if only 1 group [path] being plotted]
  theme_clear <- theme_bw() + 

  if (plot.legend==FALSE) theme_clear <- theme_clear + theme(legend.position="none")

  #Base-layer = axis labels + plot extent
  # [need to declare plot extent as well, since the axis labels don't always
  # fit within the plot area automatically calculated by ggplot, even if all
  # included in first plot; and in any case the strategy followed here is to first
  # plot right-justified labels for axis labels to left of Y axis for x< (-x.centre.range)], 
  # then centred labels for axis labels almost immediately above/below x= 0 
  # [abs(x) < x.centre.range]; then left-justified axis labels to right of Y axis [x>0].
  # This building up the plot in layers doesn't allow ggplot to correctly 
  # identify plot extent when plotting first (base) layer]

  #base layer = axis labels for axes to left of central y-axis [x< -(x.centre.range)]
  base <- ggplot(axis$label) + xlab(NULL) + ylab(NULL) + coord_equal() +
    geom_text(data=subset(axis$label,axis$label$x < (-x.centre.range)),
              aes(x=x,y=y,label=text),size=axis.label.size,hjust=1) +
    scale_x_continuous(limits=c(-plot.extent.x,plot.extent.x)) + 

  # + axis labels for any vertical axes [abs(x)<=x.centre.range]
  base <- base + geom_text(data=subset(axis$label,abs(axis$label$x)<=x.centre.range),

  # + axis labels for any vertical axes [x>x.centre.range]
  base <- base + geom_text(data=subset(axis$label,axis$label$x>x.centre.range),

  # + theme_clear [to remove grey plot background, grid lines, axis tick marks and axis text]
  base <- base + theme_clear

  #  + background circle against which to plot radar data
  base <- base + geom_polygon(data=gridline$max$path,aes(x,y),

  # + radial axes
  base <- base + geom_path(data=axis$path,aes(x=x,y=y,group=axis.no),

  # ... + group (cluster) 'paths'
  base <- base + geom_path(data=group$path,aes(x=x,y=y,group=group,colour=group),

  # ... + group points (cluster data)
  base <- base + geom_point(data=group$path,aes(x=x,y=y,group=group,colour=group),size=group.point.size)

  #... + amend Legend title
  if (plot.legend==TRUE) base  <- base + labs(colour=legend.title,size=legend.text.size)

  # ... + circular grid-lines at 'min', 'mid' and 'max' y-axis values
  base <- base +  geom_path(data=gridline$min$path,aes(x=x,y=y),
  base <- base +  geom_path(data=gridline$mid$path,aes(x=x,y=y),
  base <- base +  geom_path(data=gridline$max$path,aes(x=x,y=y),

  # ... + grid-line labels (max; ave; min) [only add min. gridline label if required]
  if (label.gridline.min==TRUE) {
    base <- base + geom_text(aes(x=x,y=y,label=text),data=gridline$min$label,face="bold",size=grid.label.size, hjust=1) }
  base <- base + geom_text(aes(x=x,y=y,label=text),data=gridline$mid$label,face="bold",size=grid.label.size, hjust=1)
  base <- base + geom_text(aes(x=x,y=y,label=text),data=gridline$max$label,face="bold",size=grid.label.size, hjust=1)

  # ... + centre.y label if required [i.e. value of y at centre of plot circle]
  if (label.centre.y==TRUE) {
    centre.y.label <- data.frame(x=0, y=0, text=as.character(centre.y))
    base <- base + geom_text(aes(x=x,y=y,label=text),data=centre.y.label,face="bold",size=grid.label.size, hjust=0.5) }



# (1) Define the data building blocks required for plotting purposes [uses
# a subset of the OAC results plotted above]

var.names <- c("All Flats", "No central heating", "Rooms per\nhousehold", "People per room", 
               "HE Qualification", "Routine/Semi-Routine\nOccupation", "2+ Car household", 
               "Public Transport\nto work", "Work from home")
var.order = seq(1:9)
values.a <- c(-0.1145725, -0.1824095, -0.01153078, -0.0202474, 0.05138737, -0.1557234, 
              0.1099018, -0.05310315, 0.0182626)
values.b <- c(0.2808439, -0.2936949, -0.1925846, 0.08910815, -0.03468011, 0.07385727, 
              -0.07228813, 0.1501105, -0.06800127)
values.c <- rep(0, 9)
group.names <- c("Blue Collar Communities", "Prospering Suburbs", "National Average")

# (2) Create df1: a plotting data frame in the format required for ggplot2

df1.a <- data.frame(matrix(c(rep(group.names[1], 9), var.names), nrow = 9, ncol = 2), 
                    var.order = var.order, value = values.a)
df1.b <- data.frame(matrix(c(rep(group.names[2], 9), var.names), nrow = 9, ncol = 2), 
                    var.order = var.order, value = values.b)
df1.c <- data.frame(matrix(c(rep(group.names[3], 9), var.names), nrow = 9, ncol = 2), 
                    var.order = var.order, value = values.c)
df1 <- rbind(df1.a, df1.b, df1.c)
colnames(df1) <- c("group", "variable.name", "variable.order", "variable.value")
#(4) Create df2: a plotting data frame in the format required for
# funcRadialPlot

m2 <- matrix(abs(c(values.a, values.b)), nrow = 2, ncol = 9, byrow = TRUE)
group.names <- c(group.names[1:2])
df22 <- data.frame(group = group.names, m2)
colnames(df22)[2:10] <- var.names

# (6) Create a radial plot using the function CreateRadialPlot, with min
# y-value in center of plot
CreateRadialPlot(df22, plot.extent.x = 1.5, grid.min = -0.4, centre.y = -0.5, 
                 label.centre.y = TRUE, label.gridline.min = FALSE)

output:enter image description here

I would like to pass a dataframe containing values in the columns from 0 to 1 to the function and produce a percentage scale in the chart. And also to have a grid showing the percentage scale on it if possible (0,10....90,100).

Here is the absolute values of the same data as in the example as an example:

m2 <- matrix(abs(c(values.a, values.b)), nrow = 2, ncol = 9, byrow = TRUE)
group.names <- c(group.names[1:2])
df22 <- data.frame(group = group.names, m2)
colnames(df22)[2:10] <- var.names
  • I'm new to R so i'm not sure how to modify the function to fit the kind of data i have, thought i might get help on stack. Might be hard since its a LOT of code, however a more experienced programmer might easily spot it... – jonas Feb 12 '15 at 20:41
  • Yeah what you found is pretty much ggradar. However it uses a rather slow function to write the data for the (colourful) radar lines (cf. my comment here). In addition the grid-lines there may appear only as points, in my package they always appear as lines. – 5th Oct 29 '17 at 13:52

You could also use the rCharts package to make this kind of plot. There are a lot of options and you can probably customize it more easily.

It it is the first time you are using rCharts, you should do the following setup:

install_github('rCharts', 'ramnathv')

Here is an example code:

#create dummy dataframe with number ranging from 0 to 1
#muliply number by 100 to get percentage

plot <- Highcharts$new()
plot$chart(polar = TRUE, type = "line",height=500)
plot$xAxis(categories=df$id, tickmarkPlacement= 'on', lineWidth= 0)
plot$yAxis(gridLineInterpolation= 'circle', lineWidth= 0, min= 0,max=100,endOnTick=T,tickInterval=10)
plot$series(data = df[,"val1"],name = "Series 1", pointPlacement="on")
plot$series(data = df[,"val2"],name = "Series 2", pointPlacement="on")

The output would look like this: enter image description here

  • looks great, just what I wanted,. – jonas Feb 13 '15 at 6:25
  • Any tips for documentations or tutorials? – jonas Feb 13 '15 at 6:42
  • You can look at the rCharts quick start page – NicE Feb 13 '15 at 10:03
  • That uses highcharts, right? As far as I know highcharts.js is not free for commercial use. In difference to plotly which is open-source. – 5th Oct 29 '17 at 11:45

Looks like you want to improve the ggradar-package. I did just that. However instead of one function I use three of them which allow the user to manipulate every aspect of the plot. Generally you can also just summarise any of my examples with one big function like ggradar().

I also created one version of the radar with plotly and shiny: enter image description here

The fully commented example you can find here. Have fun ;)


you can also try ggplot2, see my answer to another relevant question here at https://stackoverflow.com/a/35401222/2292993

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.