Learn R Programming

ade4 (version 1.7-5)

dist.quant: Computation of Distance Matrices on Quantitative Variables

Description

computes on quantitative variables, some distance matrices as canonical, Joreskog and Mahalanobis.

Usage

dist.quant(df, method = NULL, diag = FALSE, upper = FALSE, tol = 1e-07)

Arguments

df
a data frame containing only quantitative variables
method
an integer between 1 and 3. If NULL the choice is made with a console message. See details
diag
a logical value indicating whether the diagonal of the distance matrix should be printed by `print.dist'
upper
a logical value indicating whether the upper triangle of the distance matrix should be printed by `print.dist'
tol
used in case 3 of method as a tolerance threshold for null eigenvalues

Value

an object of class dist

Details

All the distances are of type $d = ||x-y||_A = sqrt((x-y)^t A (x-y))$

Examples

Run this code
data(ecomor)

if(adegraphicsLoaded()) {
  g1 <- scatter(dudi.pco(dist.quant(ecomor$morpho, 3), scan = FALSE), plot = FALSE)
  g2 <- scatter(dudi.pco(dist.quant(ecomor$morpho, 2), scan = FALSE), plot = FALSE)
  g3 <- scatter(dudi.pco(dist(scalewt(ecomor$morpho)), scan = FALSE), plot = FALSE)
  g4 <- scatter(dudi.pco(dist.quant(ecomor$morpho, 1), scan = FALSE), plot = FALSE)
  G <- ADEgS(list(g1, g2, g3, g4), layout = c(2, 2))
  
} else {
  par(mfrow = c(2, 2))
  scatter(dudi.pco(dist.quant(ecomor$morpho, 3), scan = FALSE))
  scatter(dudi.pco(dist.quant(ecomor$morpho, 2), scan = FALSE))
  scatter(dudi.pco(dist(scalewt(ecomor$morpho)), scan = FALSE))
  scatter(dudi.pco(dist.quant(ecomor$morpho, 1), scan = FALSE))
  par(mfrow = c(1, 1))
}

Run the code above in your browser using DataLab