Distance matrix to pairwise distance list in R

Is there any R package to obtain a pairwise distance list if my input file is a distance matrix For eg, if my input is a data.frame like this:

``````        A1      B1      C1      D1
A1     0      0.85    0.45    0.96
B1            0       0.85    0.56
C1                    0       0.45
D1                            0
``````

I want the output as:

``````A1  B1  0.85
A1  C1  0.45
A1  D1  0.96
B1  C1  0.85
B1  D1  0.56
C1  D1  0.45
``````

I found a question to do the opposite function using package 'reshape' but could not tweak it to get what I wanted.

• Please post the output of `dput(your-distance-object)` so we are not guessing whether you are actually dealing with a `data.frame`, a `matrix`, a `table`, an actual distance matrix, or something else entirely. This would definitely influence the applicability of the answers presented so far. I ask this because your title says "distance matrix" (which is generally created using the `dist` function), but your question description says you're dealing with a `data.frame`. These are quite different. – A5C1D2H2I1M1N2O1R2T1 Jan 12 '15 at 4:38
• I'm also suspicious about this... distance matrices generated with `dist` print the lower triangle by default, not the upper triangle. And are your blank cells `NA`, or simply hidden (as with the `print` method for `dist` objects)? – jbaums Jan 12 '15 at 4:55

If you have a `data.frame` you could do something like:

``````df <- structure(list(A1 = c(0, 0, 0, 0), B1 = c(0.85, 0, 0, 0), C1 = c(0.45,
0.85, 0, 0), D1 = c(0.96, 0.56, 0.45, 0)), .Names = c("A1", "B1",
"C1", "D1"), row.names = c(NA, -4L), class = "data.frame")

data.frame( t(combn(names(df),2)), dist=t(df)[lower.tri(df)] )
X1 X2 dist
1 A1 B1 0.85
2 A1 C1 0.45
3 A1 D1 0.96
4 B1 C1 0.85
5 B1 D1 0.56
6 C1 D1 0.45
``````

Another approach if you have it as a `matrix` with row+col-names is to use `reshape2` directly:

``````mat <- structure(c(0, 0, 0, 0, 0.85, 0, 0, 0, 0.45, 0.85, 0, 0, 0.96,
0.56, 0.45, 0), .Dim = c(4L, 4L), .Dimnames = list(c("A1", "B1",
"C1", "D1"), c("A1", "B1", "C1", "D1")))

library(reshape2)
subset(melt(mat), value!=0)

Var1 Var2 value
5    A1   B1  0.85
9    A1   C1  0.45
10   B1   C1  0.85
13   A1   D1  0.96
14   B1   D1  0.56
15   C1   D1  0.45
``````

A couple of other options:

1. Generate some data

``````D <- dist(cbind(runif(4), runif(4)), diag=TRUE, upper=TRUE) # generate dummy data
m <- as.matrix(D) # coerce dist object to a matrix
dimnames(m) <- dimnames(m) <- list(LETTERS[1:4], LETTERS[1:4])
``````
2. Assuming you just want the distances for pairs defined by the upper triangle of the distance matrix, you can do:

``````xy <- t(combn(colnames(m), 2))
data.frame(xy, dist=m[xy])

#  X1 X2      dist
# 1 A  B 0.3157942
# 2 A  C 0.5022090
# 3 A  D 0.3139995
# 4 B  C 0.1865181
# 5 B  D 0.6297772
# 6 C  D 0.8162084
``````
3. Alternatively, if you want distances for all pairs (in both directions):

``````data.frame(col=colnames(m)[col(m)], row=rownames(m)[row(m)], dist=c(m))

#    col row      dist
# 1    A   A 0.0000000
# 2    A   B 0.3157942
# 3    A   C 0.5022090
# 4    A   D 0.3139995
# 5    B   A 0.3157942
# 6    B   B 0.0000000
# 7    B   C 0.1865181
# 8    B   D 0.6297772
# 9    C   A 0.5022090
# 10   C   B 0.1865181
# 11   C   C 0.0000000
# 12   C   D 0.8162084
# 13   D   A 0.3139995
# 14   D   B 0.6297772
# 15   D   C 0.8162084
# 16   D   D 0.0000000
``````

or the following, which excludes any `NA` distances, but doesn't keep the column/row names (though this would be easy to rectify since we have the column/row indices):

``````data.frame(which(!is.na(m), arr.ind=TRUE, useNames=FALSE), dist=c(m))
``````
• I get the following error msg. Any idea why ? Error in m[xy] : subscript out of bounds – Anurag Mishra Jan 12 '15 at 10:49
• @AnuragMishra When you run my code? Or when you apply it to your data? – jbaums Jan 12 '15 at 11:18
• When I apply it to my data, which is a dataframe. – Anurag Mishra Jan 12 '15 at 11:51
• @AnuragMishra Please edit your question and add the output of `dput(d)`, where `d` is your dataframe. If `d` is too large to include in this way, then provide a small subset of it for us to work with. – jbaums Jan 12 '15 at 12:15
• I am using two columns from a data frame as the X and Y coordinates to find distances. dput() gives me the following Size = 121L, Diag = TRUE, Upper = TRUE, method = "euclidean", call = dist(x = cbind(x\$da1, x\$da2), diag = TRUE, upper = TRUE), class = "dist") x\$da1 and x\$da2 are my two columns from the data frame 'x' Is this what you wanted ? – Anurag Mishra Jan 14 '15 at 6:58

I suppose you have a contingency table or a matrix defined as follow:

``````mat = matrix(c(0, 0.85, 0.45, 0.96, NA, 0, 0.85, 0.56, NA, NA, 0, 0.45, NA,NA,NA,0), ncol=4)
cont = as.table(t(mat))

#     A    B    C    D
#A 0.00 0.85 0.45 0.96
#B      0.00 0.85 0.56
#C           0.00 0.45
#D                0.00
``````

Then you simply need a data.frame conversion, and remove NA/0's:

``````df = as.data.frame(cont)
df = df[complete.cases(df),]
df[df[,3]!=0,]

#   Var1 Var2 Freq
#5     A    B 0.85
#9     A    C 0.45
#10    B    C 0.85
#13    A    D 0.96
#14    B    D 0.56
#15    C    D 0.45
``````

Here is an example using the spaa-package.

``````exampleInput <- structure(list(A1 = c(0, 0, 0, 0), B1 = c(0.85, 0, 0, 0),
C1 = c(0.45, 0.85, 0, 0), D1 = c(0.96, 0.56, 0.45, 0)),
.Names = c("A1", "B1", "C1", "D1"), row.names = c(NA, -4L), class = "data.frame")

library(spaa)
pairlist <- dist2list(as.dist(t(exampleInput)))
pairlist[as.numeric(pairlist\$col) > as.numeric(pairlist\$row),]
``````

Output:

``````   col row value
2   B1  A1  0.85
3   C1  A1  0.45
4   D1  A1  0.96
7   C1  B1  0.85
8   D1  B1  0.56
12  D1  C1  0.45
``````