# Convert a DataFrame into Adjacency/Weights Matrix in R

I have a DataFrame, `df`.

`n` is a column denoting the number of groups in the `x` column.
`x` is a column containing the comma-separated groups.

``````df <- data.frame(n = c(2, 3, 2, 2),
x = c("a, b", "a, c, d", "c, d", "d, b"))

> df
n        x
2     a, b
3  a, c, d
2     c, d
2     d, b
``````

### I would like to convert this DataFrame into a weights matrix where the row and column names are the unique values of the groups in `df\$x`, and the elements represent the number of times each of the groups appear together in `df\$x`.

The output should look like this:

``````m <- matrix(c(0, 1, 1, 1, 1, 0, 0, 1, 1, 0, 0, 2, 1, 1, 2, 0), nrow = 4, ncol = 4)
rownames(m) <- letters[1:4]; colnames(m) <- letters[1:4]

> m
a b c d
a 0 1 1 1
b 1 0 0 1
c 1 0 0 2
d 1 1 2 0
``````
• your question is unclear. I can't see `c` in `df`. it only has `n` and `x` – YOLO Jan 24 at 1:52
• c is one of the x values. Its a frequency table of how often different letters appear in the same line in x – RAB Jan 24 at 1:59
• Do you mean df\$x instead of df\$c in the bolded part of the question? – mikoontz Jan 24 at 3:05
• Hi All, you're right! I meant `df\$x`. Sorry for the confusion. I changed it to make sense. – Rich Pauloo Jan 25 at 22:48

Here's a very rough and probably pretty inefficient solution using `tidyverse` for wrangling and `combinat` to generate permutations.

``````library(tidyverse)
library(combinat)

df <- data.frame(n = c(2, 3, 2, 2),
x = c("a, b", "a, c, d", "c, d", "d, b"))

df %>%
## Parse entries in x into distinct elements
mutate(split = map(x, str_split, pattern = ', '),
flat = flatten(split)) %>%
## Construct 2-element subsets of each set of elements
mutate(combn = map(flat, combn, 2, simplify = FALSE)) %>%
unnest(combn) %>%
## Construct permutations of the 2-element subsets
mutate(perm = map(combn, permn)) %>%
unnest(perm) %>%
## Parse the permutations into row and column indices
mutate(row = map_chr(perm, 1),
col = map_chr(perm, 2)) %>%
count(row, col) %>%
## Long to wide representation
spread(key = col, value = nn, fill = 0) %>%
## Coerce to matrix
column_to_rownames(var = 'row') %>%
as.matrix()
``````
• Excellent! This works. Thanks Dan. – Rich Pauloo Jan 30 at 1:31

Using Base R, you could do something like below

``````a = strsplit(as.character(df\$x),', ')
b = unique(unlist(a))
d = unlist(sapply(a,combn,2,toString))
e = data.frame(table(factor(d,c(paste(b,b,sep=','),combn(b,2,toString)))))
f = read.table(text = do.call(paste,c(sep =',', e)),sep=',',strip.white = T)
g = xtabs(V3~V1+V2,f)
g[lower.tri(g)] = t(g)[lower.tri(g)]
g
V2
V1  a b c d
a 0 1 1 1
b 1 0 0 0
c 1 0 0 2
d 1 0 2 0
``````
• This solution works for the example provided, but doesn't scale to the problem I have. That's my fault for making a poor reproducible example, and also a word of caution for others reading this! – Rich Pauloo Jan 30 at 1:31

Here is another possible approach using `data.table`:

``````#generate the combis
combis <- df[, transpose(combn(sort(strsplit(x, ", ")[[1L]]), 2L, simplify=FALSE)),
by=1L:df[,.N]]

#create new rows for identical letters within a pair or any other missing combi
withDiag <- out[CJ(c(V1,V2), c(V1,V2), unique=TRUE), on=.(V1, V2)]

#duplicate the above for lower triangular part of the matrix
withLowerTri <- rbindlist(list(withDiag, withDiag[,.(df, V2, V1)]))

#pivot to get weights matrix
outDT <- dcast(withLowerTri, V1 ~ V2, function(x) sum(!is.na(x)), value.var="df")
``````

`outDT` output:

``````   V1 a b c d
1:  a 0 1 1 1
2:  b 1 0 0 1
3:  c 1 0 0 2
4:  d 1 1 2 0
``````

If matrix output is desired, then

``````mat <- as.matrix(outDT[, -1L])
rownames(mat) <- unlist(outDT[,1L])
``````

output:

``````  a b c d
a 0 1 1 1
b 1 0 0 1
c 1 0 0 2
d 1 1 2 0
``````