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Is it possible to vary a plot's color gradient by aesthetic? I'm generating a plot using code similar the lines presented below and finding in some cases that it is not always easy to distinguish between the various groups. For example, on the chart below it would be easier to distinguish the results if I could have the group A points use a white-blue gradient and the group B points use a white-red gradient.

data <- data.frame(x=c(1,2,3,4,5,6,1,2,3,4,5,6), 
    y=c(1,2,3,4,5,6,1,2,3,4,5,6), grp=c(rep("A",6),rep("B",6)),
    dt=c("2010-06-30","2010-05-31","2010-04-30",
      "2010-03-31","2010-02-26","2010-01-29","2010-06-30",
      "2010-05-31","2010-04-30",
      "2010-03-31","2010-02-26","2010-01-29"))
p <- ggplot(data, aes(x,y,color=as.integer(as.Date(data$dt)))) + 
    geom_jitter(size=4, alpha=0.75, aes(shape=grp)) + 
    scale_colour_gradient(limits=as.integer(as.Date(c("2010-01-29","2010-06-30"))),
    low="white", high="blue") +
    scale_shape_discrete(name="") +
    opts(legend.position="none")
print(p)
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1  
I don't think you can do that, at least not easily. It just doesn't map onto the underlying logic. –  Ista Apr 20 '11 at 22:43
    
Plus a legend would be pretty confusing –  hadley Apr 21 '11 at 3:15

1 Answer 1

up vote 4 down vote accepted

you can do that by preparing color by yourself before calling ggplot2.
Here is an example:

data$sdt <- rescale(as.numeric(as.Date(data$dt)))  # data scaled [0, 1]
cols <- c("red", "blue") # colour of gradients for each group

# here the color for each value are calculated
data$col <- ddply(data, .(grp), function(x)
     data.frame(col=apply(colorRamp(c("white", cols[as.numeric(x$grp)[1]]))(x$sdt),
       1,function(x)rgb(x[1],x[2],x[3], max=255)))
       )$col

p <- ggplot(data, aes(x,y, shape=grp, colour=col)) +
  geom_jitter(size=4, alpha=0.75) + 
  scale_colour_identity() +  # use identity colour scale
  scale_shape_discrete(name="") +
  opts(legend.position="none")
print(p)
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1  
Worked great, thanks. It took me a bit to realize that the grp column needs to be a factor, and then the data frame needs to be sorted by those factors. –  user338714 Apr 21 '11 at 6:14

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