Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'd like to classify the values of a data frame according to two columns. Let's say, I've got the following data frame:

my.df <- data.frame(a=c(1:20), b=c(61:80))

And now I want to subdivide it into 8 areas by dividing the 2D-scatterplot into 4 equal parts and then overlaying a rectangle in the middle that would consist of a quarter of each of the 4 parts. So far I've been using the following tedious way:

ar <- range(my.df$a)
br <- range(my.df$b)

aint <- seq(ar[1], ar[2], by=(ar[2]-ar[1])/4)
bint <- seq(br[1], br[2], by=(br[2]-br[1])/4)

my.df$z <- NA
my.df[which(my.df$a < aint[3] & my.df$b < bint[3]),"z"] <- 1
my.df[which(my.df$a < aint[3] & my.df$b >= bint[3]),"z"] <- 2
...
my.df[which(my.df$z == 1 & my.df$a >= aint[2] & my.df$b >= bint[2]),"z"] <- 5
...

I am sure there must be a way to do it in a neater and more general way, i.e. by writing a general function, but I am struggling to write one myself.

Also, I was surprised to see that after all of this, the class of the column z is automatically set to shingle. Why that? How does R "know" that this is a shingle?

share|improve this question
2  
You must have some unnamed package loaded or have attached some dataframe or... something. The class of "z' is "numeric". –  BondedDust Sep 14 '12 at 15:41
    
@DWin I guess it's lattice or latticeExtra, but I'm not sure. –  AnjaM Sep 17 '12 at 7:00

1 Answer 1

up vote 1 down vote accepted

I'd approach it by cutting it into 16 groups first (x and y into 4 groups independently) and then combining them back together into fewer groups.

my.df$a.q <- cut(my.df$a, breaks=4, labels=1:4)
my.df$b.q <- cut(my.df$b, breaks=4, labels=1:4)
my.df$a.b.q <- paste(my.df$a.q, my.df$b.q, sep=".")
my.df$z <- c("1.1"=1, "1.2"=1, "1.3"=2, "1.4"=2, 
             "2.1"=1, "2.2"=3, "2.3"=4, "2.4"=2,
             "3.1"=5, "3.2"=6, "3.3"=7, "3.4"=8,
             "4.1"=5, "4.2"=5, "4.3"=8, "4.4"=8)[my.df$a.b.q]

This seems reasonable

plot(my.df$a, my.df$b, col=my.df$z)

With some data with more coverage:

set.seed(1234)
my.df <- data.frame(a=runif(1000, 1, 20), b=runif(1000, 61, 80))

enter image description here

share|improve this answer
    
Thanks for your answer! Do you have any idea how the creation of z can be done in a more general way, e.g. if I would want to subdivide the axes in more than four parts each? The more subdivisions, the more cumbersome it becomes to assign the "cluster". Also, I've tried to use col=my.df$a.b.q for plotting so that 16 populations get coloured, but only 4 populations (subdivided according to a) got coloured although length(unique(my.df$a.b.q)) is 16. Why aren't the colours assigned according to unique entries in a.b.q? –  AnjaM Sep 17 '12 at 9:08
1  
The more general approach is basically what you had originally; a separate check to see if a point lies within the defining boundary of a region. I was exploiting some of the symmetry and making the boundary tests into membership tests. When you use col=my.df$a.b.q, I think what is happening is that that column is being turned into a number and the fractional part of the number is being dropped to determine the color. If you use col=factor(my.df$a.b.q), you get 16 colors. –  Brian Diggs Sep 17 '12 at 15:42
    
Thanks Brian! I actually like your approach with cutting and vector indexing very much. –  AnjaM Sep 18 '12 at 7:32

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.