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I often visualize one time series against another using scatterplots in Excel, but since recent data are more relavant, I use different highlights for more recent time periods:

enter image description here

In this case the month, week and today plots are simply different (more recent) slices of the same time series, so basically there are four superimposed plots in this chart. How can I do the same in R? I have gotten so far:

enter image description here

But i'd like to replicate what I have in excel. How do I add new plots to the same chart in R?

Or perhaps I could even go further and use the col attribute in the R plot to get a continuous increase in the colour up to the today value, thus avoiding these discreet steps? How would I do that?

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Similar question here: stackoverflow.com/questions/5479822/…. If using ggplot, you can alter the alpha parameter for transparency. –  Chase May 26 '11 at 11:23

2 Answers 2

up vote 5 down vote accepted

Here is a skeleton example of how to go about doing it using ggplot:

library(ggplot2)

day <- 1:100
dat <- data.frame(
  day=day,
  x = day+(1+rnorm(100, 0, 10)),
  y = 5 + day+(1+rnorm(100, 0, 10)),
  when = cut(day, 5)
)

ggplot(dat, aes(x=x, y=y, colour=when)) + geom_point()

enter image description here

And for smooth colours:

ggplot(dat, aes(x=x, y=y, colour=day)) + geom_point() + 
    scale_colour_gradient(low="pink", high="red")

enter image description here

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@Andrie Okay thanks. And here's a related question. Should I move straight to ggplot then rather than learning R's native charting? –  Thomas Browne May 26 '11 at 11:27
1  
@thomas, that's down to personal choice. My choice was to learn ggplot straightaway, because I liked its consistency of grammar. But it has its own learning curve. –  Andrie May 26 '11 at 11:31
    
Okay I think you've answered the question about native v ggplot with your examples. Great stuff. –  Thomas Browne May 26 '11 at 11:32
    
I'd suggest learning base R graphics first. Your graphs won't be as pretty as ggplots at first but it is very flexible and allows you to do pretty much anything you want. The learning curve is also easier. ggplot is always a good idea to learn too though. –  Sacha Epskamp May 26 '11 at 11:47
2  
The other benefit to learning ggplot is that you learn one syntax for all types of plots (scatter, bar, lines, etc). Base graphics use a variety of function names (plot, hist, barchart, others??) and all come with their own quirks and expectations. ggplot2 on the other hand will always start with ggplot() or qplot() and the input data (more or less) will always be in the same format every time. The way ggplot deals with legends and scaling is also uber convenient. Finally, the ggplot website is very handy though I do recommend picking up the book for deeper understanding. </end soapbox> –  Chase May 26 '11 at 11:59

You can use the lower level plotting function points() to add points to an already existing plot. It works in exactly the same way you create a scatter plot through plot() except that it adds points to the currently used plot.

For example:

plot(1:10)
points(10:1,col="red")

Edit:

One way to do the colors is by using rgb() as Chi suggested. I like to create a dummy variable with values between 0 and 1 and use that as a scalar on the colors. For example:

x <- rnorm(100)
y <- 0.5*x + rnorm(100)
z <- 0.5*y + rnorm(100)

dum <- (z - min(z)) / (max(z) - min(z))

plot(x,y,col=rgb(1-dum*0.4,1-dum*0.8,1-dum*0.8),pch=16)

This makes the points redder as they have a higher value of z. Of course you can change min(z) and max(z) into the bounds of the scale you are interested in.

enter image description here

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Excellent thank you. That works beautifully. Any idea how I'd vary the colours continuously from point to point? –  Thomas Browne May 26 '11 at 11:23
1  
@Thomas Look at RColorBrewer for general color theme (esp. sequential palette) and the rgb() and col2rgb() base functions to vary the color, e.g. according to value on the x-axis. Alpha blending is also available, e.g. plot(replicate(2, rnorm(1000)), pch=19, col="#FF737350"). –  chl May 26 '11 at 11:30
    
Edited the answer –  Sacha Epskamp May 26 '11 at 11:47
    
Thank you Sacha; I'll use this while I learn ggplot. –  Thomas Browne May 31 '11 at 21:07

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