ScoreContrib {mvdalab} | R Documentation |
Generates a score contribution plot
Description
Generates a the Score Contribution Graph both mvdareg
and mvdapca
objects.
Usage
ScoreContrib(object, ncomp = 1:object$ncomp, obs1 = 1, obs2 = NULL)
Arguments
object |
an object of class |
ncomp |
the number of components to include in the model (see below). |
obs1 |
the first observaion(s) in the score(s) comparison. |
obs2 |
the second observaion(s) in the score(s) comparison. |
Details
ScoreContrib
is used to generates the score contributions for both PLS and PCA models. Up to two groups of score(s) can be selected. If only one group is selected, the contribution is measured to the model average. For PLS models the PCA loadings are replaced with the PLS weights.
Value
The output of ScoreContrib
is a matrix of score contributions for the specified observation(s).
Author(s)
Nelson Lee Afanador (nelson.afanador@mvdalab.com)
References
MacGregor, Process Monitoring and Diagnosis by Multiblock PLS Methods, May 1994 Vol. 40, No. 5 AIChE Journal.
Examples
data(Penta)
mod1 <- plsFit(log.RAI ~., scale = TRUE, data = Penta[, -1],
ncomp = 2, validation = "none")
Score.Contributions1 <- ScoreContrib(mod1, ncomp = 1:2, obs1 = 1, obs2 = 3)
plot(Score.Contributions1, ncomp = 2)
## Not run:
data(Penta)
mod2 <- plsFit(log.RAI ~., scale = TRUE, data = Penta[, -1],
ncomp = 2, validation = "none")
Score.Contributions2 <- ScoreContrib(mod2, obs1 = 1, obs2 = 3)
plot(Score.Contributions2)
Score.Contributions3 <- ScoreContrib(mod1, obs1 = c(1, 3), obs2 = c(5:10))
plot(Score.Contributions3)
## End(Not run)
### PLS MODEL FIT WITH method = 'wrtpls' and validation = 'none', i.e. WRT-PLS is performed ###
## Not run:
mod3 <- plsFit(Sepal.Length ~., scale = TRUE, data = iris,
method = "wrtpls", validation = "none") #ncomp is ignored
Score.Contributions4 <- ScoreContrib(mod3, ncomp = 1:5, obs1 = 1, obs2 = 3)
plot(Score.Contributions4, ncomp = 5)
## End(Not run)
#PCA Model
pc1 <- pcaFit(Penta[, -1], ncomp = 2)
Score.Contributions1 <- ScoreContrib(pc1, obs1 = 1, obs2 = 3)
plot(Score.Contributions1)