# how to sort numbers to a list based on proximity in R

Let's say I had a list of numbers in a vector. I'm trying to come up with a script that will divide or sort the list into (not necessarily even) sets whose numbers are fairly close to each other relative to the other numbers in the vector. you can assume that the numbers in the vector are in ascending order.

``````my_list<- c(795, 798, 1190, 1191, 2587, 2693, 2796, 3483, 3668)
``````

That is, I need help coming up with a script that will divide and assign these numbers into sets where

``````set_1<- c(795, 798) # these 2 numbers are fairly close to each other
set_2<- c(1190, 1191) # these numbers would be another set
set_3<- c(2587, 2693, 2796) # these numbers would be another set relative to the other numbers
set_4<- c(3483, 3668)  # the last set
``````

any help or suggestions are greatly appreciated.

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`findInterval` or `cut` may be a starting point but the parameters of what you're after are pretty loosely defined. It would help to know how many numbers total, range and what close to each other is defined as. –  Tyler Rinker Nov 25 '12 at 0:55

In general, what you are asking for is called Cluster Analysis, for which there are many possible methods and algorithms, many of which are already available in R packages listed here: http://cran.r-project.org/web/views/Cluster.html.

Here is for example how you can cluster your data using hierarchical clustering.

``````tree <- hclust(dist(my_list))
groups <- cutree(tree, h = 300)
# [1] 1 1 2 2 3 3 3 4 4
split(my_list, groups)
# \$`1`
# [1] 795 798
#
# \$`2`
# [1] 1190 1191
#
# \$`3`
# [1] 2587 2693 2796
#
# \$`4`
# [1] 3483 3668
``````
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thank you. Once I assign numbers to a vector, how would I access an element in that vector? `set_1<- split(my_list, groups)[1]`. How would I access `798` in `set_1`? I tried `set_1[1]` but that returns the entire vector. –  user1313954 Nov 25 '12 at 1:13
you can do `sets <- split(my_list, groups)` then just access the different sets using `sets[[1]]`, `sets[[2]]`, etc. (Really, you shouldn't have to create variables for each set, just keep them in a list.) –  flodel Nov 25 '12 at 1:17
thanks again kind sir –  user1313954 Nov 25 '12 at 1:23

Flodel's answer is way better as I know enough about cluster analysis to fill a small thimble and still have room left for 2 peas, but here's basic response:

``````split(my_list, cut(my_list, breaks=seq(0, 4000, by=1000)))
``````
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thanks kind sir –  user1313954 Nov 25 '12 at 1:24

I know this has been answered well already but I spent a while writing something so I'm going to post it here anyway.

I tried to write a function from scratch. Got a bit carried away. It probably isn't massively robust but then the question has already been answered so I stopped.

``````GroupThese <- function(x) {

# Create distance matrix of x[i] to all other x[i].
dx <- dist(sort(x), diag = FALSE)

# Convert to matrix.
mx <- as.matrix(dx)

# Set x[i] to itself to be infinity so that it is not considered.
diag(mx) <- Inf

# Find the nearest neighbour of each element.
near <- apply(mx, 2, which.min)

# Decide if each element is closer to lower or upper element.
to <- sapply(seq_along(near), function(x) near[x] < x)

# Calculate the set for each element.
set <- sapply(seq_along(to), function(x) sum(to[x:length(to)]))

# Reverse sets (because they come out in reverse order above).
set <- abs(set - max(set)) + 1

# Attach set labels to elements.
s <- rbind(x, set)

# Function for access.
function(n) {
if (n > max(s[2, ])) {
stop("There ain't that many sets.")
} else {
s[1, s[2, ] == n]
}
}
}
``````

Now to use the function. Create the sets like this:

``````sets <- GroupThese(my_list)
``````

Then to get a set just do this (put whatever set number you want in brackets):

``````sets(1)
``````

In hindsight I wish I hadn't done it.

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I greatly appreciate the effort. I urge everyone to give this man a thumbs up!! –  user1313954 Nov 25 '12 at 2:34