dist {stats} | R Documentation |
This function computes and returns the distance matrix computed by using the specified distance measure to compute the distances between the rows of a data matrix.
dist(x, method = "euclidean", diag = FALSE, upper = FALSE, p = 2) as.dist(m, diag = FALSE, upper = FALSE) ## Default S3 method: as.dist(m, diag = FALSE, upper = FALSE) ## S3 method for class 'dist' print(x, diag = NULL, upper = NULL, digits = getOption("digits"), justify = "none", right = TRUE, ...) ## S3 method for class 'dist' as.matrix(x, ...)
x |
a numeric matrix, data frame or |
method |
the distance measure to be used. This must be one of
|
diag |
logical value indicating whether the diagonal of the
distance matrix should be printed by |
upper |
logical value indicating whether the upper triangle of the
distance matrix should be printed by |
p |
The power of the Minkowski distance. |
m |
An object with distance information to be converted to a
|
digits, justify |
passed to |
right, ... |
further arguments, passed to other methods. |
Available distance measures are (written for two vectors x and y):
euclidean
:Usual distance between the two vectors (2 norm aka L_2), sqrt(sum((x_i - y_i)^2)).
maximum
:Maximum distance between two components of x and y (supremum norm)
manhattan
:Absolute distance between the two vectors (1 norm aka L_1).
canberra
:sum(|x_i - y_i| / (|x_i| + |y_i|)). Terms with zero numerator and denominator are omitted from the sum and treated as if the values were missing.
This is intended for non-negative values (e.g., counts), in which case the denominator can be written in various equivalent ways; Originally, R used x_i + y_i, then from 1998 to 2017, |x_i + y_i|, and then the correct |x_i| + |y_i|.
binary
:(aka asymmetric binary): The vectors are regarded as binary bits, so non-zero elements are ‘on’ and zero elements are ‘off’. The distance is the proportion of bits in which only one is on amongst those in which at least one is on.
minkowski
:The p norm, the pth root of the sum of the pth powers of the differences of the components.
Missing values are allowed, and are excluded from all computations
involving the rows within which they occur.
Further, when Inf
values are involved, all pairs of values are
excluded when their contribution to the distance gave NaN
or
NA
.
If some columns are excluded in calculating a Euclidean, Manhattan,
Canberra or Minkowski distance, the sum is scaled up proportionally to
the number of columns used. If all pairs are excluded when
calculating a particular distance, the value is NA
.
The "dist"
method of as.matrix()
and as.dist()
can be used for conversion between objects of class "dist"
and conventional distance matrices.
as.dist()
is a generic function. Its default method handles
objects inheriting from class "dist"
, or coercible to matrices
using as.matrix()
. Support for classes representing
distances (also known as dissimilarities) can be added by providing an
as.matrix()
or, more directly, an as.dist
method
for such a class.
dist
returns an object of class "dist"
.
The lower triangle of the distance matrix stored by columns in a
vector, say do
. If n
is the number of
observations, i.e., n <- attr(do, "Size")
, then
for i < j ≤ n, the dissimilarity between (row) i and j is
do[n*(i-1) - i*(i-1)/2 + j-i]
.
The length of the vector is n*(n-1)/2, i.e., of order n^2.
The object has the following attributes (besides "class"
equal
to "dist"
):
Size |
integer, the number of observations in the dataset. |
Labels |
optionally, contains the labels, if any, of the observations of the dataset. |
Diag, Upper |
logicals corresponding to the arguments |
call |
optionally, the |
method |
optionally, the distance method used; resulting from
|
Becker, R. A., Chambers, J. M. and Wilks, A. R. (1988) The New S Language. Wadsworth & Brooks/Cole.
Mardia, K. V., Kent, J. T. and Bibby, J. M. (1979) Multivariate Analysis. Academic Press.
Borg, I. and Groenen, P. (1997) Modern Multidimensional Scaling. Theory and Applications. Springer.
daisy
in the cluster package with more
possibilities in the case of mixed (continuous / categorical)
variables.
hclust
.
require(graphics) x <- matrix(rnorm(100), nrow = 5) dist(x) dist(x, diag = TRUE) dist(x, upper = TRUE) m <- as.matrix(dist(x)) d <- as.dist(m) stopifnot(d == dist(x)) ## Use correlations between variables "as distance" dd <- as.dist((1 - cor(USJudgeRatings))/2) round(1000 * dd) # (prints more nicely) plot(hclust(dd)) # to see a dendrogram of clustered variables ## example of binary and canberra distances. x <- c(0, 0, 1, 1, 1, 1) y <- c(1, 0, 1, 1, 0, 1) dist(rbind(x, y), method = "binary") ## answer 0.4 = 2/5 dist(rbind(x, y), method = "canberra") ## answer 2 * (6/5) ## To find the names labels(eurodist) ## Examples involving "Inf" : ## 1) x[6] <- Inf (m2 <- rbind(x, y)) dist(m2, method = "binary") # warning, answer 0.5 = 2/4 ## These all give "Inf": stopifnot(Inf == dist(m2, method = "euclidean"), Inf == dist(m2, method = "maximum"), Inf == dist(m2, method = "manhattan")) ## "Inf" is same as very large number: x1 <- x; x1[6] <- 1e100 stopifnot(dist(cbind(x, y), method = "canberra") == print(dist(cbind(x1, y), method = "canberra"))) ## 2) y[6] <- Inf #-> 6-th pair is excluded dist(rbind(x, y), method = "binary" ) # warning; 0.5 dist(rbind(x, y), method = "canberra" ) # 3 dist(rbind(x, y), method = "maximum") # 1 dist(rbind(x, y), method = "manhattan") # 2.4