Soils | R Documentation |
Soil characteristics were measured on samples from three types of contours (Top, Slope, and Depression) and at four depths (0-10cm, 10-30cm, 30-60cm, and 60-90cm). The area was divided into 4 blocks, in a randomized block design. (Suggested by Michael Friendly.)
Soils
A data frame with 48 observations on the following 14 variables. There are 3 factors and 9 response variables.
Group
a factor with 12 levels, corresponding to the combinations of Contour
and Depth
Contour
a factor with 3 levels: Depression
Slope
Top
Depth
a factor with 4 levels: 0-10
10-30
30-60
60-90
Gp
a factor with 12 levels, giving abbreviations for the groups:
D0
D1
D3
D6
S0
S1
S3
S6
T0
T1
T3
T6
Block
a factor with levels 1
2
3
4
pH
soil pH
N
total nitrogen in %
Dens
bulk density in gm/cm$^3$
P
total phosphorous in ppm
Ca
calcium in me/100 gm.
Mg
magnesium in me/100 gm.
K
phosphorous in me/100 gm.
Na
sodium in me/100 gm.
Conduc
conductivity
These data provide good examples of MANOVA and canonical discriminant analysis in a somewhat
complex multivariate setting. They may be treated as a one-way design (ignoring Block
),
by using either Group
or Gp
as the factor, or a two-way randomized block
design using Block
, Contour
and Depth
(quantitative, so orthogonal
polynomial contrasts are useful).
Horton, I. F.,Russell, J. S., and Moore, A. W. (1968) Multivariate-covariance and canonical analysis: A method for selecting the most effective discriminators in a multivariate situation. Biometrics 24, 845–858. http://www.stat.lsu.edu/faculty/moser/exst7037/soils.sas
Khattree, R., and Naik, D. N. (2000) Multivariate Data Reduction and Discrimination with SAS Software. SAS Institute.
Friendly, M. (2006) Data ellipses, HE plots and reduced-rank displays for multivariate linear models: SAS software and examples. Journal of Statistical Software, 17(6), http://www.jstatsoft.org/v17/i06.