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I would like to create a triangle plot with organization structure (hierarchy) showing the number of employees at each level in different companies.

Here is some example data:

mylabd <- data.frame (company = rep(c("A", "B", "C"), each = 7),
skillsDg = rep(c("Basic", "HighSc", "Undgd", "MAST", "PHD", "EXPD", "EXECT"), 3),
number = c(200, 100, 40, 30, 10, 0, 0,
           220, 110, 35, 10, 0, 4, 1,
           140, 80, 120, 50, 52, 52, 3)
           )
   company skillsDg number
1        A    Basic    200
2        A   HighSc    100
3        A    Undgd     40
4        A     MAST     30
5        A      PHD     10
6        A     EXPD      0
7        A    EXECT      0
8        B    Basic    220
9        B   HighSc    110
10       B    Undgd     35
11       B     MAST     10
12       B      PHD      0
13       B     EXPD      4
14       B    EXECT      1
15       C    Basic    140
16       C   HighSc     80
17       C    Undgd    120
18       C     MAST     50
19       C      PHD     52
20       C     EXPD     52
21       C    EXECT      3

The objective is to reflect how different companies hire different skilled or degree workers.

The hypothetical figure is this (although color fill is not perfect). enter image description here The idea is that the width of line at each stage is proportional and then lines are connected. If there is no category in subsequent level, it will not be connected (like in company B). I couldn't find a program that can do this and neither could figure out. Any idea ?

Edit:

I do not alot about R, but here is my how my idea is shaping. It divides each line segment into two from a point to make it symetical. The drawn horizontal lines are then connected.

enter image description here

share|improve this question
    
Have you tried violin plots? –  James Dec 21 '12 at 15:13
    
I was not sure it voilin plot works for two way categorical variable (rather frequency distribution of quantative variable), may be need trick to fit it ! –  rdorlearn Dec 21 '12 at 15:25

3 Answers 3

up vote 14 down vote accepted

I don't know of any function doing that but here is one from scratch:

my1 <- data.frame (company = rep(c("A", "B", "C"), each = 7), skillsDg = rep(c("Basic", "HighSc", "Undgd", "MAST", "PHD", "EXPD", "EXECT"), 3), number = c(200, 100, 40, 30, 10, 0, 0, 220, 110, 35, 10, 0, 4, 1, 140, 80, 120, 50, 52, 52, 3) )

my2 <- split(my1,my1$company) #split your dataframe into a list where each element is a company
# The next line create the layout
layout(matrix(1:(length(my2)+1), nrow=1), width=c(1,rep(4,length(my2))))
# Then we draw the x-axis:
par(mar=c(3,0,3,0))
plot(NA,axes=F, xlim=c(0,1),ylim=c(1,nlevels(my1$skillsDg)))
axis(side=4,tick=F,labels=unique(my1$skillsDg),
     at=seq_along(unique(my1$skillsDg)), las=2, line=-4)
# Then we apply a graphing function to each company:
lapply(my2,function(x){
    par(mar=c(3,0,3,0))
    plot(NA, xlim=c(-max(my1$number),max(my1$number)), 
             ylim=c(1,nlevels(my1$skillsDg)),axes=F)
    title(sub=x$company[1],line=1)
    abline(h=seq_along(x$skillsDg), col="grey80")
    polygon(x=c(x$number,rev(-1*x$number)), 
            y=c(seq_along(x$skillsDg),rev(seq_along(x$skillsDg))), 
            col=as.numeric(x$company))
    })

enter image description here

Edit: You can of course add whatever you want inside the graphing function in lapply (but in some case it might mean changing a little the dimensions of the graph):

layout(matrix(1:(length(my2)+1), nrow=1), width=c(1,rep(4,length(my2))))
par(mar=c(3,0,3,0))
plot(NA,axes=F, xlim=c(0,1),ylim=c(1,nlevels(my1$skillsDg)))
axis(side=4,tick=F,labels=unique(my1$skillsDg),
    at=seq_along(unique(my1$skillsDg)), las=2, line=-4)
lapply(my2,function(x){
    par(mar=c(3,0,3,0))
    plot(NA, xlim=c(-max(my1$number)-50,max(my1$number)+50), 
        ylim=c(1,nlevels(my1$skillsDg)),axes=F)
    title(sub=x$company[1],line=1)
    abline(h=seq_along(x$skillsDg), col="grey80")
    text(x=x$number+5, y=seq_along(x$skillsDg)+.1, label=x$number, pos=4)
    polygon(x=c(x$number,rev(-1*x$number)), 
        y=c(seq_along(x$skillsDg),rev(seq_along(x$skillsDg))), 
        col=as.numeric(x$company))
    })

enter image description here

share|improve this answer
    
great ! thanks !! I think label are alphabettically shorted - for example Exect follows Basic, I think data points are correct, just labels –  rdorlearn Dec 21 '12 at 16:07
2  
My bad. I corrected it. I wanted to use the fact that this category was factors but forgot that the default for factors is to be ordered alphabetically. –  plannapus Dec 21 '12 at 16:11
1  
Just small request (hope I am not asking too much), can we add number at each stage, may be at right or left of the line for each education level –  rdorlearn Dec 21 '12 at 16:24

Using the grid package, we can have someting like this:

enter image description here

mylabd <- data.frame (company = rep(c("A", "B", "C"), each = 7),
                      skillsDg = rep(c("Basic", "HighSc", "Undgd", "MAST", "PHD", "EXPD", "EXECT"), 3),
                      number = c(200, 100, 40, 30, 10, 0, 0,
                                 220, 110, 35, 10, 0, 4, 1,
                                 140, 80, 120, 50, 52, 52, 3)
)



## to comapre we need o have the same scales for all organizations
nskills <- nlevels(mylabd$skillsDg)
ncompany <- nlevels(mylabd$company)
barYscale <- c(0,  nskills) * 1.05
barXscale <- c(0, max(mylabd$number) )* 1.05
## the global scene
vp <- plotViewport(c(5, 4, 4, 1),
                   yscale = barYscale,
                   layout = grid.layout(nrow=1,ncol=nbars))

pushViewport(vp)
grid.rect()
grid.yaxis(at=c(1:nlevels(mylabd$skillsDg)),label=unique(mylabd$skillsDg))
grid.grill()

## split data by companya
data.splitted <- split(mylabd,f=mylabd$company)
lapply(1:3,function(company){

  x <- data.splitted[[company]]
  vv <- x$number
  companyName <- unique(x$company)

  pushViewport(viewport(layout.pos.col=company,    
                        xscale = barXscale,
                        yscale = barYscale))
  grid.rect()
 # grid.xaxis(at= mean(x$number),label = companyName)
  grid.xaxis()
  grid.polygon(x  = unit.c(unit(0.5,'npc')-unit(vv/2,'native'),
                           unit(0.5,'npc')+unit(rev(vv)/2,'native')),
               y  = unit.c(unit(1:nmeasures,'native'),
                           unit(rev(1:nmeasures),'native')),
               gp=gpar(fill = rainbow(nmeasures)[company]))
  grid.polygon(x  = unit.c(unit(0.5,'npc')-unit(vv/2,'native'),
                           unit(0.5,'npc')+unit(rev(vv)/2,'native')),
               y  = unit.c(unit(1:nmeasures,'native'),
                           unit(rev(1:nmeasures),'native')),
               id = c(1:nmeasures,rev(1:nmeasures)),
               gp=gpar(fill = NA))

  grid.text( x = unit(0.5,'npc'),
             y = unit(0.5,'native'),
             label = unique(x$company))

  popViewport()

})

popViewport()
share|improve this answer
    
+1 very nice !! –  rdorlearn Dec 26 '12 at 16:01

Different chart than you asked for, but an attempt to follow some common visualization principles:

library(ggplot2)
mylabd$skillsDg <- factor(mylabd$skillsDg, levels = c("Basic", "HighSc", "Undgd", "MAST", "PHD", "EXPD", "EXECT"))
p <- ggplot(data=mylabd, aes(x=skillsDg, y=number, fill = skillsDg))
p <- p + geom_bar(stat = "identity") + coord_flip()
p <- p + facet_wrap( ~ company, ncol = 1, nrow=3)
plot(p)

enter image description here

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