# Efficient Way to Convert Vector of Distances to Distance Object in R (ideally without creating a full distance matrix)

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.

• 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
• @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
• @user20650: noted, title changed. Thanks again. – Thomas Weise Dec 16 '15 at 3:19