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I have a vector of distances which I get from some other procedure and want to convert it to a dist object in the R language .

Below I give an example how such a vector looks like: distVector is computed in the same way said other procedure computes the distance vector. Ideally, I would like to transform this vector into a distance matrix (dist object) without wasting resources.

I think I could just transform it to a matrix by copying it as upper triangular and lower triangular matrix, setting the diagonals to 0, and dealing with the fact that it is sort of upside down compared to the dist object structure (compare outputs below). Then again, first creating a full matrix and then (probably?) reducing it again to a vector in the dist object seems wasteful to me. Is there a better way?

Example code (note: I cannot change how distVector is computed):

rawData<-matrix(c(1,1,1,1.1,1,1,1,1,1.2,2,2,2,2.2,2,2,2,2.2,2.2,3,3,3,3.4,3,3),ncol=3,byrow=TRUE);

distVector<-integer(0);
for(i in 1:dim(rawData)[1]) {
  for(j in (i+1):dim(rawData)[1]) {
    a <- (rawData[i,]-rawData[j,]);
    distVector <- c(distVector, sqrt(a %*% a));
  }
}

print(distVector)
print(dist(rawData))

Output: Compare distVector to the output of the dist function, it is upside down)

> print(distVector)
 [1] 0.1000000 0.2000000 1.7320508 1.8547237 1.9697716 3.4641016 3.7094474 0.2236068 1.6763055
[10] 1.7916473 1.9209373 3.4073450 3.6455452 1.6248077 1.7549929 1.8547237 3.3526109 3.6055513
[19] 0.2000000 0.2828427 1.7320508 1.9899749 0.3464102 1.6248077 1.8547237 1.5099669 1.8000000
[28] 0.4000000

> print(dist(rawData))
          1         2         3         4         5         6         7
2 0.1000000                                                            
3 0.2000000 0.2236068                                                  
4 1.7320508 1.6763055 1.6248077                                        
5 1.8547237 1.7916473 1.7549929 0.2000000                              
6 1.9697716 1.9209373 1.8547237 0.2828427 0.3464102                    
7 3.4641016 3.4073450 3.3526109 1.7320508 1.6248077 1.5099669          
8 3.7094474 3.6455452 3.6055513 1.9899749 1.8547237 1.8000000 0.4000000

Many thanks, Thomas.

  • 2
    creating the matrix seems reasonable to me ... mat <- matrix(NA, ncol=dim(rawData)[1], nrow=dim(rawData)[1]) ; mat[lower.tri(mat)] <- distVector – user20650 Dec 16 '15 at 2:46
  • That's a short and nice answer. I am not yet familiar with R. This I wonder how the memory consumption of this would be? Will this create a full mm matrix, fill its lower triangle with my data, and then extract this lower triangle again in my subsequent as.dist call? Or would it just somehow create an empty container for a mm matrix or something, not consuming much memory? Either way, your method seems to be feasible to me. Thanks ^_^ – Thomas Weise Dec 16 '15 at 2:50
  • Sorry i dont know about R's memory usage / copying of objects etc . There a quite a few questions on SO that have looked at such stuffs though -- this was my fist search hit.. stat.ethz.ch/R-manual/R-devel/library/base/html/tracemem.html might be useful – user20650 Dec 16 '15 at 2:57
  • 1
    @user20650: ugh, that's much to read ^_^. Well, unless there is a simpler, non-matrix-creating solution, I will take your suggestion, as it is very compact code-wise. In case no non-matrix-creating-solution shows up until tomorrow, if you want you can copy-paste your comment as answer and I will accept it. (Basically, it is an answer.) – Thomas Weise Dec 16 '15 at 3:08
  • 1
    @user20650: noted, title changed. Thanks again. – Thomas Weise Dec 16 '15 at 3:19

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