The goal of distops is to provide a set of functions to compute distances between observations in a sample and to perform operations on distance matrices.
You can install the development version of distops from GitHub with:
# install.packages("devtools")
::install_github("LMJL-Alea/distops") devtools
library(distops)
We provide two functions for package developers to help with defining
efficient implementation of the dist
functions for custom
distances. Namely:
use_distops()
setups a package to use
distops for computing distances. In particular, it
creates a src/
directory with a Makevars
file
and a Makevars.win
file. It also creates a
R/distops-package.R
file with the appropriate
roxygen2 tags so that the NAMESPACE
file
is modified to add the importFrom()
directives for the Rcpp
and RcppParallel packages and the useDynLib()
directive for
packages with compiled code. It finally modifies the
DESCRIPTION
file to add Rcpp,
RcppParallel and distops to the
Imports
and LinkingTo
fields and GNU make to
the SystemRequirements
field.use_distance()
creates R and C++ files for easy
implementation of custom distances.Let us compute the Euclidean distance matrix for the
iris
dataset:
<- dist(iris[, 1:4], method = "euclidean") D
We can subset this matrix using the [
operator. We can
either provide the same indices for rows and columns in which case it
return another object of class dist
:
1:3, 1:3]
D[#> 1 2
#> 2 0.5385165
#> 3 0.5099020 0.3000000
Or we can provide different indices for rows and columns in which case it returns a dense matrix:
2:3, 7:12]
D[#> 7 8 9 10 11 12
#> 2 0.5099020 0.4242641 0.5099020 0.1732051 0.8660254 0.4582576
#> 3 0.2645751 0.4123106 0.4358899 0.3162278 0.8831761 0.3741657
The subsetting operation is fully parallelized using the RcppParallel package. It is also memory efficient as it does not copy the original distance matrix.
The medoid of a sample is the observation that minimizes the sum of
distances to all other observations. The find_medoids()
function computes the medoid of a sample for a given distance. It takes
advantage of the RcppParallel package to compute the
medoid in parallel.
find_medoids(D)
#> [1] 62
If the memberships
argument is provided, it returns the
medoid for each cluster.
find_medoids(D, memberships = as.factor(rep(1:3, each = 50L)))
#> 1 2 3
#> 8 97 113