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I have this five (5) geom_vline() in my plot and I want them to have a different colors. Is there a way to do that?

Here's my codes,

library(ggplot2)

x <- seq(-7, 8, length = 90)
tvalues <- dt(x,15)

qplot(x, tvalues) + geom_polygon(fill = "purple", colour = "purple", alpha = 0.5) + 
  geom_point(fill = "purple", colour = "purple", alpha = 0.2, pch = 21) +
  geom_vline(xintercept = c(a <- c(-2.27685371,  0.01661155,  
  0.33598194,  1.92426022), mean(a)), linetype = "dashed", colour = "red") + theme_bw() + xlab(bquote(bold('Average Tensile Strength (lb/in'^'2'*')'))) +
  ylab(expression(bold(P(x)))) +
  opts(title = expression(bold("Student t Distribution")), plot.title = theme_text(size = 20, colour = "darkblue"),
       panel.border = theme_rect(size = 2, colour = "red"))

And here is the output,

enter image description here

Notice the five vertical lines in the plot, I want each of those line to have a different color,

I tried this

library(colorRamps)
geom_vline(xintercept = c(a <- c(-2.27685371,  0.01661155,  
   0.33598194,  1.92426022), mean(a)), linetype = "dashed", colour = matlab.like(5)) 

but didn't work, Another attempt

geom_vline(xintercept = c(a <- c(-2.27685371,  0.01661155,  
   0.33598194,  1.92426022), mean(a)), linetype = "dashed", colour = c("red","blue","green","yellow","orange"))

and still unsuccessful.

Thanks in advance!

share|improve this question

1 Answer 1

up vote 13 down vote accepted

So you're sort of missing the fundamental idea behind ggplot2, which is that you always put all your data into a data.frame and every aesthetic that you map corresponds to a variable in your data frame.

You could get 5 vertical lines, each of a different color with five separate calls to geom_vline but that misses the point of the entire package. Instead, you create a data frame:

a <- c(-2.27685371,0.01661155,0.33598194,1.92426022)
vlines <- data.frame(xint = c(a,mean(a)),grp = letters[1:5])

I've explicitly created a grouping variable grp to map to colour. Then we add the layer and map the aesthetics to these variables using aes:

qplot(x, tvalues) + 
  geom_polygon(fill = "purple", colour = "purple", alpha = 0.5) + 
  geom_point(fill = "purple", colour = "purple", alpha = 0.2, pch = 21) +
  geom_vline(data = vlines,aes(xintercept = xint,colour = grp), linetype = "dashed") + 
  theme_bw() + 
  xlab(bquote(bold('Average Tensile Strength (lb/in'^'2'*')'))) +
  ylab(expression(bold(P(x)))) +
  opts(title = expression(bold("Student t Distribution")), 
       plot.title = theme_text(size = 20, colour = "darkblue"),
       panel.border = theme_rect(size = 2, colour = "red"))

(The colors will be hard to distinguish because they're dashed lines, and two of them are nearly on top of each other.)

You will get much more out of ggplot2 if you transition away from qplot towards ggplot() and start putting your data into data frames rather than vectors.

share|improve this answer
    
Well, thanks for reminding that :) I should have thought of that. Thank you so much! you save my time :) –  Al-Ahmadgaid Asaad Jun 19 '12 at 14:15
    
Thank you so much @joran! –  Al-Ahmadgaid Asaad Jun 19 '12 at 14:16
    
That is a great answer, it gave me the right direction on doing something similar. I needed to add geom_hlines to the mean of a plot with different groups. I did mean by group and used geom_hline as describe by you. The difference is that I've used "linetype = grp" to have different linetypes and it was inside the aes call, instead of being outside as shown here. –  Eduardo Jul 10 at 10:28

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