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I have a number of related time series I want to plot together. I am using ggplot2 Here is an example of what my data looks like:

id <- LETTERS[1:18]
appDates <- as.Date("2000-01-01", origin = '1970-01-01') + 1:10
appRate <- runif(18, 1,4)
appRank <- rank(-appRate - colSums(anorm))

anorm <- array(rnorm(18*11), c(11,18))
tempDf <-lapply(seq_along(appDates), function(x) data.frame(adate = appDates[x], group = 1:18, id = id, arate = appRate + colSums(anorm[1:(x+1),]), ranked = appRank))

tempDf <- do.call(rbind, tempDf)
ggplot(tempDf, aes(x = adate, y = arate, group = group, color = id)) + geom_line()

This is fine but I would like arrows going from the id labels to the relevant time series as it is hard to pick out a particular path with the colors being similar.

enter image description here

I have tried `directlabels' but I cant seem to quite get it

p <- ggplot(tempDf, aes(x = adate, y = arate, group = group, color = id)) + geom_line()
direct.label(p,list(last.points, hjust=0.8, vjust = 1))

enter image description here

A crude example done by hand of what I am sort of looking for

enter image description here

With the addition of final rankings I have added differing line thickness to aid identification.

p <- ggplot(tempDf, aes(x = adate, y = arate, group = group, color = id, size = ranked)) + geom_line()
p + scale_size(range=c(2.6, 0.4), guide=FALSE)+
       guides(colour = guide_legend(override.aes = list(size=seq(2.6,0.4, length.out = 18)[appRank])))

enter image description here

share|improve this question
the directlabels version looks much better than the arrows, in my opinion; it's also easier to achieve programmatically. –  baptiste Jun 25 '13 at 16:47
Yes I realise the arrows will look pretty bad once they are all in. Maybe a change of color scheme may help. It is hard to pick out a timeseries as it stands. –  user1609452 Jun 25 '13 at 16:50
@user1609452 Nice question. No matter what you do, 18 time series all plotted on top of each other are going to look ugly, but more importantly, it will be difficult to draw inference. In a recent answer I suggested that a user use a heat map to visualize multiple time series like these; might that not be appropriate in this case as well? It would be easy to tell the groups apart, and you could easily compare any group at different time points. –  nograpes Jun 25 '13 at 18:36
@nograpes thanks. The timeseries represent rankings at particular times. So if I could easily identify which series was which then I could see the ordering at a given point in time which is what is important in this case. I have updated my question and added different line thickness to make identification easier. –  user1609452 Jun 26 '13 at 4:59
I'll supplement @nograpes that there is an inherent problem in having 18 distinct lines in a single plot. First, the average person cannot distinct between more than 6-7 qualitative colours. This means that colour coding 18 different lines makes it impossible to easily identify which line is which data. By adding line thickness to circumvent this problem, you are using a double-factor coding for a single category. In addition, with thicker lines for some lines you are implying these lines are more important. –  MrGumble Jun 26 '13 at 7:50

1 Answer 1

up vote 1 down vote accepted

Although this doesn't answer your question exactly, I wanted to include some pictures of what I mean, so I put it in an answer.

If rank is really what you want to show, then I especially recommend the heat map. Except that instead of using the rate as the y-axis, you use the rank, and you use the rate as the fill color. Here is what I mean:

# I think your rank was broken -- but I might be missing something.
ggplot(tempDf, aes(x = adate ,fill = arate, y = real.rank)) +   ]
  geom_tile() +

enter image description here

If you really wanted to emphasize the change in rank, you could draw lines in between the letters:

ggplot(tempDf, aes(x = adate ,fill = arate, y = real.rank)) +   
  geom_tile() +
  geom_text(aes(label=id),color='white') +

enter image description here

In either case, I think that you add an extra dimension of data with a heatmap, the rank itself, at the expense of making it more difficult to tell the exact rate.

share|improve this answer
Yes i really like that. I will try it on my dataset and see how it looks. –  user1609452 Jun 26 '13 at 13:28

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