dist

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Compute the variance, covariance or covariance-matrix.


Usage 1
dist(xscalar, yscalar)
dist(xvector, yvector)
Result 1
The euclidan distance dscalar of x and y. The two arguments must be scalars or vectors with the same length.

Usage 2
dist(xvector)
dist(xmatrix)
Result 2
The matrix d with the euclidian distances of all elements or row vectors of x. The result is a matrix with nrow(x) rows and columns.
xvector -> d[i,j] = dist(x[i], x[j])
xmatrix -> d[i,j] = dist(x[i,*], x[j,*])
with: i,j = 0 .. ncol(x)

Usage 3
dist(xvector, yscalar)
dist(xmatrix, yvector)
Result 3
The vector d with the euclidian distances of all elements or row vectors of x to y. The result is a vector with nrow(x) rows and columns.
xvector,yscalar -> d[i] = dist(x[i], y)
xmatrix,yvector -> d[i,j] = dist(x[i,*], y) (ncol(x) = nrow(y)
with: i = 0 .. ncol(x)

Usage 4
dist(xmatrix, flag)
Result 3
The matrix d with the euclidian distances of the row vectors (flag=0) or column vectors (flag=1) or x.
flag=0 -> d[i,j] = dist(x[i,*], x[j,*]) , with: i,j = 0 .. nrow(x)
flag=1 -> d[i,j] = dist(x[*,i], x[*,j]) , with: i,j = 0 .. ncol(x)


See also
var, corr

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