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Is there a way to jitter the lines in geom_line()? I know it kinda defies the purpose of this plot, but if you have a plot with few lines and would like them all to show it could be handy. Maybe some other solution to this visibility problem.

Please see below for code, jitter geom_line

A  <- c(1,2,3,5,1)
B  <- c(3,4,1,2,3)
id <- 1:5
df <- data.frame(id, A, B)


# install.packages(reshape2)
require(reshape2) # for melt
dfm <- melt(df, id=c("id"))

# install.packages(ggplot2)
require(ggplot2)
p1 <- ggplot(data = dfm, aes(x = variable, y = value, group = id, 
color= as.factor(id))) + geom_line() + labs(x = "id # 1 is hardly 
visible as it is covered by id # 5") + scale_colour_manual(values = 
c('red','blue', 'green', 'yellow', 'black')) 


p2 <- ggplot(subset(dfm, id != 5), aes(x = variable, y = value, 
group = id, color= as.factor(id))) + geom_line() + labs(x = "id # 
5 removed, id # 1 is visible") + scale_colour_manual(values = 
c('red','blue', 'green', 'yellow', 'black')) 

# install.packages(RODBC)
require(gridExtra)

grid.arrange(p1, p2)
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2 Answers 2

up vote 9 down vote accepted

You can try

geom_line(position=position_jitter(w=0.02, h=0))

and see if that works well.

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I like this solution, I'll try it out on my real data tomorrow (when I get back to the lab). Did you try it with my code? –  Eric Fail Jun 2 '12 at 21:44
    
yes I did, but whether you prefer vertical or horizontal jitter will depend on your data, I think. Also, it may not be a good idea to jitter everything if you only want one line jittered. –  baptiste Jun 2 '12 at 22:00
    
@babtiste, good point. –  Eric Fail Jun 2 '12 at 22:02

I tend to use different linestyles, so that, say, a solid blue line "peeks through" a dashed red line on top of it. Then again, it does depend on what you want to impart to the reader. Keep in mind first and foremost that data should be points and theory lines unless this makes things cluttered. Unless the y and x values are identical, it'll be easier to see the points. (or you could apply the existing jitter function to the x-values) Next, if you just want to show which runs are in the "bundle" and which are outliers, overlap doesn't matter because it's very unlikely that two outliers will be near-equal.

If you want to show a bunch of near-equal runs, you may prefer (which is to say, your readers will understand better) to plot the deltas against a mean rather than the actual values.

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I like your argument, but I'm unsure about how to apply it to my specific case. Could it be possible for you to supply some sample code or links to some visual examples? –  Eric Fail Jun 2 '12 at 21:46
    
@EricFail : the easiest way to apply jitter when plotting points is just y_jit<-jitter(y_data) and/or same for x_data and then feed the jittered data to your plotting code. If you want to "jitter" lines, I'd go w/ baptiste's solution. –  Carl Witthoft Jun 3 '12 at 12:06

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