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.

  • 1
    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

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

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

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

Your Answer

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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