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The following example uses a simulated dataset for showcasing some of the possibilities of the ASCA method.
Two categorical factors and a covariate are simulated together with a standard normal set of 10 responses.
set.seed(1)
dataset <- data.frame(y = I(matrix(rnorm(24*10), ncol = 10)),
x = factor(c(rep(2,8), rep(1,8), rep(0,8))),
z = factor(rep(c(1,0), 12)), w = rnorm(24))
colnames(dataset$y) <- paste('Var', 1:10, sep = " ")
rownames(dataset) <- paste('Obj', 1:24, sep = " ")
str(dataset)
#> 'data.frame': 24 obs. of 4 variables:
#> $ y: 'AsIs' num [1:24, 1:10] -0.626 0.184 -0.836 1.595 0.33 ...
#> ..- attr(*, "dimnames")=List of 2
#> .. ..$ : NULL
#> .. ..$ : chr [1:10] "Var 1" "Var 2" "Var 3" "Var 4" ...
#> $ x: Factor w/ 3 levels "0","1","2": 3 3 3 3 3 3 3 3 2 2 ...
#> $ z: Factor w/ 2 levels "0","1": 2 1 2 1 2 1 2 1 2 1 ...
#> $ w: num 0.707 1.034 0.223 -0.879 1.163 ...
This ASCA implementation uses R’s formula interface for model specification. This means that the first argument is a formula with response on the left and design on the right, separated by a tilde operator, e.g. y ~ x + z or assessment ~ assessor + candy. The names in the formula refer to variables in a data.frame (or list). Separation with plus (+) adds main effects to the model, while separation by stars (*) adds main effects and interactions, e.g. y ~ x * z. Colons (:) can be used for explicit interactions, e.g. y ~ x + z + x:z. More complicated formulas exist, but only a simple subset is supported by asca.
A basic ASCA model having two factors is fitted and printed as follows.
Scores for first factor are extracted and a scoreplot with confidence ellipsoids is produced.
sc <- scores(mod)
head(sc)
#> Comp 1 Comp 2
#> Obj 1 0.9395791 -0.1039977
#> Obj 2 0.9395791 -0.1039977
#> Obj 3 0.9395791 -0.1039977
#> Obj 4 0.9395791 -0.1039977
#> Obj 5 0.9395791 -0.1039977
#> Obj 6 0.9395791 -0.1039977
scoreplot(mod, legendpos = "topleft", ellipsoids = "confidence")
This is repeated for the second factor.
A basic loadingplot for the first factor is generated using graphics from the pls package.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.