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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?

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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:

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

enter image description here

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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
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

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